| pred,label |
| |
| Lamb,103.7,103.7,103.7 |
| Corn,103.13,103.13,103.13 |
| Barley,102.46,102.46,102.46 |
| Rye,87.37,87.37,87.37 |
| Beef,85.27,85.27,85.27 |
| Wheat,83.73,83.73,83.73 |
| Coffee,82.2,82.2,82.2 |
| Tea,68.48,68.48,68.48 |
| Peanuts,64.71,64.71,64.71 |
| Palm oil,57.6,57.6,57.6 |
| Pork,55.36,55.36,55.36 |
| Rice, |
| "15.89Country,""Long-term price index in food commodities, 1850-2015, World, 1934" |
| Lamb,103.7 |
| Corn,103.13 |
| Barley,102.46 |
| Rye,87.37 |
| Beef,85.27 |
| Wheat,83.73 |
| Coffee,82.2 |
| Tea,68.48 |
| Peanuts,64.71 |
| Palm oil,57.6 |
| Pork,55.36 |
| Rice,42.48 |
| Sugar,25.56 |
| Cocoa,18.81 |
| "3Country,""Armed forces personnel as share of total population, 1985" |
| Mauritania,0.48 |
| Fiji,0.38 |
| Madagascar,0.21 |
| "YesCountry,""Armed forces personnel as share of total population, 1985" |
| Mauritania,0.48 |
| Fiji,0.38 |
| Madagascar,0.21 |
| |
| ,29 |
| 68,23 |
| |
| 2015,68,23 |
| 2016,62,29 |
| |
| Caring about ordinary people,23.0 |
| Well-qualified to be president,26.0 |
| Cha moatic,39.0 |
| A strong leader,55.0 |
| Dangerous,62.0 |
| Intolerant,65.0 |
| Arrogant,75.0 |
| |
| Caring about ordinary people,23.0 |
| Well-qualified to be president,26.0 |
| Chaismatic,39.0 |
| A strong leader,55.0 |
| Dangerous,62.0 |
| Intolerant,65.0 |
| Arrogant,75.0 |
| |
| Lonely,24,24,31 |
| Depressed,13,36,49 |
| Inspired,16,53,69 |
| Connected,21,49,71 |
| Angry,25,47,71 |
| Amused,44,,88 |
| |
| Lonely,,24.0,31 |
| Depressed,,36.0,49 |
| Inspired,16.0,53.0,69 |
| Connected,21.0,49.0,71 |
| Angry,25.0,,71 |
| Amused,44.0,,88 |
| "1Country,""Gross enrollment ratio, secondary education, gender parity index (GPI),2006" |
| Slovenia,- |
| Albania,0.96 |
| Cameroon,0.79 |
| Low income,0.71 |
| "0.04Country,""Gross enrollment ratio, secondary education, gender parity index (GPI),2006" |
| Slovenia,1.0 |
| Albania,0.96 |
| Cameroon,0.79 |
| Low income,0.71 |
| |
| China,,50,0 |
| EU,19.0,59,21 |
| U.S,29.0,41,29 |
| |
| China,,50,0 |
| EU,19.0,59,21 |
| U.S.,29.0,41,29 |
| |
| Refused,2 |
| Don't know,2 |
| Yes, abandoning news outlets,31 |
| No, not abandoning news outlets,65",2 |
| "2Entity,Value |
| Refused,2 |
| Don't know,2 |
| Yes, abandoning news outlets,31 |
| No, not abandoning news outlets,65 |
| |
| England,1815,-,2310,-,2750 |
| |
| England,1787.598,2247.231,2431.041,2531.071,2871.43 |
| "5Country,""Share that agrees that vaccines are important for children to have, 2018" |
| United Arab Emirates,94 |
| Mauritania,91 |
| Spain,88 |
| Armenia,73 |
| South Korea,72 |
| "YesCountry,""Share that agrees that vaccines are important for children to have, 2018" |
| United Arab Emirates,94 |
| Mauritania,91 |
| Spain,88 |
| Armenia,73 |
| South Korea,72 |
| |
| Child Labor (Boys, World, 2000-2012) (ILO),19.10185084,19.77539955,20.55511367,19.82770093,16.49921696,17.68907885,17.84308262,17.04245345,16.18233548 |
| Child Labor (All, World, ILO-IPEC),17.8196722,17.5385767,17.31304414,17.36188092,16.53323855,16.767187 |
| |
| Child Labor (Boys, World, 2000-2012) (ILO),19.36,,20.41,,,18.94,, |
| Child Labor (All, World, ILO-IPCE),16.81,,,18.81,,18.15, |
| Child Labor (Girls, World, 2000-2012) (ILO),18.16,,20.21,,,20.61,, |
| |
| U.S.,58,42 |
| UK,67,33 |
| Canada,68,32 |
| Australia,71,29 |
| New Zealand,76,24 |
| |
| U.S.,58,42 |
| UK,67,33 |
| Canada,68,32 |
| Australia,71,29 |
| New Zealand,76,24 |
| |
| Education,11 |
| ""Management, business, finance"",17 |
| Social services, legal,,11 |
| STEM,52 |
| Other non-STEM,20 |
| |
| Other non-STEM,20 |
| Social services legal,11 |
| Management business,17 |
| |
| DK,3 |
| Oppose,17 |
| Support,80 |
| |
| DK,3 |
| Support,80 |
| Oppose,17 |
| |
| Turkey,,30,53,0 |
| Christian,,33,53,0 |
| Sunni,,46,36,0 |
| Shia,,44,33,0 |
| Lebanon,,40,42,0 |
| Jordan,,60,23,0 |
| |
| Turkey,,30.0,53.0,0 |
| Christian,,,33.0,53.0 |
| Sunni,,46.0,36.0,0 |
| Shia,,44.0,33.0,0 |
| Lebanon,13.0,40.0,42.0,0 |
| Jordan,8.0,8.0,60.0,23.0 |
| Syrian,,64.0,26.0,0 |
| |
| Hungary,36.9,38.1,19.1,29.0,46.0,49.2,56.7,56.7,49.3,51.2,58.7,56.2,59.0 |
| Lithuania,13.7,11.3,5.3,5.4,11.0,16.2,19.8,8.2,-1.6,7.2,15.7,-3.1,18.9 |
| |
| Hungary,32.0,30.0,19.0,32.0,48.0,46.0,58.0,57.0,29.0,55.0,54.0,52.0,56.0 |
| Lithuania,17.0,13.0,4.0,7.0,10.0,9.0,-,4.0,-,-,14.0,-,18.0 |
| |
| Work effectively with Congress,54.0,33,13.0,43 |
| Handle an international crisis,54.0,35,25.0,43 |
| Make wise decisions about immigration policy,55.0,39,26.0,43 |
| Manage the executive branch effectively,52.0,34,21.0,45 |
| Make good appointments to the federal courts,48.0,32,25.0,46 |
| Use military force wisely,51.0,32,26.0,46 |
| Make good decisions about economic policy,46.0,29,31.0,53 |
| Negotiate favorable trade agreements with other countries,44.0,26,30.0,54 |
| |
| Work effectively with Congress,54.0,33,13,43 |
| Handle an international crisis,54.0,35,25,43 |
| Make wise decisions about immigration policy,55.0,39,26,43 |
| Manage the executive branch effectively,52.0,34,21,45 |
| appointmentsto the federal courts,48.0,32,25,46 |
| Make good appointments to the federal courts,48.0,32,25,46 |
| Use military force wisely,51.0,32,26,46 |
| about economic policy,46.0,29,31,53 |
| Make good decisions,46.0,29,31,53 |
| with other countries,26.0,30,54,0 |
| trade agreements,26.0,30,54,0 |
| Negotiate favorable trade agreements with other countries,26.0,30,54,0 |
| |
| Spain,-,-,-,-,-,-,-,-,77.0 |
| Mexico,-,-,-,-,-,56.0,55.0,58.0,62.0 |
| Italy,-,-,-,-,-,72.0,75.0,80.0,89.0 |
| |
| Spain,58.0,59.0,60.0,68.0,67.0,70.0,73.0,76.0,75.0 |
| Mexico,42.0,44.0,45.0,48.0,49.0,53.0,55.0,58.0,60.0 |
| Italy,66.0,57.0,60.0,73.0,75.0,78.0,80.0,82.0,89.0 |
| |
| Rural,51,32,13,0 |
| Suburban,45,34,15,0 |
| Urban,46,33,13,0 |
| West,53,28,13,0 |
| South,40,34,18,0 |
| Midwest,50,31,15,0 |
| Northeast,52,36,8,0 |
| Hispanic,39,31,20,0 |
| Black,43,29,18,0 |
| White,50,32,13,0 |
| Total,47,33,14,0 |
| |
| Rural,51,13 |
| Suburban,45,15 |
| Urban,46,33 |
| West,53,13 |
| South,40,18 |
| Midwest,50,31 |
| Northeast,52,15 |
| Hispanic,39,20 |
| Black,43,18 |
| White,50,32 |
| Total,,33 |
| |
| Hispa nics,15 |
| Blacks,22 |
| Whites,41 |
| Asians,63 |
| |
| Hispa nics,15.0 |
| Blacks,22.0 |
| Whites, |
| Asians,63.0 |
| |
| Rep/Lean Rep,22, |
| Dem/Lean Dem,8,92 |
| All Hispanics,12,86 |
| |
| Rep/Lean Rep,22, |
| Dem/Lean Dem,8,92.0 |
| All Hispanics,12,86.0 |
| |
| Jul 2015,45,33,22 |
| Sep 2015,49,21,30 |
| |
| Jul 2015,45,33,22 |
| Sep 2015,49,21,30 |
| |
| 2002,66,0 |
| 2007,30,0 |
| 2009,78,0 |
| 2011,76,34 |
| 2013,69,30 |
| 2015,72,0 |
| |
| 2002,16,30 |
| 2007,0,68 |
| 2009,20,78 |
| 2011,22,76 |
| 2013,29,69 |
| 2015,0,0 |
| |
| 2019,53,0 |
| 2020,68,30 |
| |
| 2019,0,53 |
| 2020,68,30 |
| |
| Corruption,29.0,62 |
| Economy,23.0,70 |
| Energy policy,14.0,73 |
| Relations w/ EU,,82 |
| Relations w/ Ukraine,13.0,83 |
| Relations w/U.S,10.0,85 |
| Relations w/ China,4.0,90 |
| |
| Corruption,29,62 |
| Economy,23,70 |
| Energy policy,14,73 |
| Relations w/ EU,11,52 |
| Relations w/ Ukraine,13,83 |
| Relations w/U.S.,10,85 |
| Relations w/ China,,,90 |
| |
| Simulation,32 |
| Team sport or racing,33 |
| Role-playing,39 |
| Shooter,42 |
| Adventure,49 |
| Strategy,62 |
| Puzzle,62 |
| |
| Simulation,32.0 |
| or racing Team sport,33.0 |
| Role-playing,39.0 |
| Shooter,42.0 |
| Adventure,49.0 |
| Strategy,62.0 |
| Puzzle,62.0 |
| |
| government,84,49,35,15 |
| Chinese,84,49,35,15 |
| who,40,18,22,20 |
| EU,36,10,26,51 |
| |
| government,84,49,35,,,0.0 |
| Chinese,0,0,13.0,15.0,20,59 |
| who,40,18,22,40,20,59 |
| EU,36,10,26,51,11,62 |
| |
| Strong ties with Russia,15 |
| Strong ties with U.S.,57 |
| Don 't know,7 |
| Equally close ties (VOL),21",Yes |
| "0.038388889Entity,Value |
| Russia,15 |
| Strong ties with Russia,15 |
| Equally close ties (VOL),21 |
| Strong ties with U.S,57 |
| Don't know,7 |
| |
| ""Independent (scores 41 to 59)"",11,0,10,35 |
| Republican (scores 0 to 40),33,0,38,35 |
| ""Democrat (scores 60 to 100)"",55,54,54,54 |
| |
| Independent (scores 41 to 59),11,11,10,11 |
| Republican (scores 0 to 40),33,34,38,35 |
| Democrat (scores 60 to 100),55,54,54,54 |
| "LiberiaCountry,""Human Development Index, 1993" |
| Denmark,0.81 |
| Libya,0.69 |
| Ecuador,0.65 |
| Botswana,0.58 |
| "0.23Country,""Human Development Index, 1993" |
| Denmark,0.81 |
| Libya,0.69 |
| Ecuador,0.65 |
| Botswana,0.58 |
| |
| 2012,28,59 |
| 2014,0,0 |
| 2016,37,50 |
| 2018,29,58 |
| |
| 2012,59,28 |
| 2014,-,0 |
| 2016,50,0 |
| 2018,58,29 |
| |
| UK,37.0 |
| Spain,48.0 |
| France,54.0 |
| Poland,62.0 |
| Greece,62.0 |
| Italy,63.0 |
| Germany,63.0 |
| U.S,43.0 |
| |
| UK,37.0 |
| Spain,48.0 |
| France,54.0 |
| Poland,62.0 |
| Greece,62.0 |
| Italy,63.0 |
| Germany,63.0 |
| U.S,43.0 |
| |
| Democrats (188),36.0,34.0, |
| Other Republicans (211),54.0,32.0, |
| Freedom Caucus Republicans (36),72.0,28.0, |
| Total (435 members),47.0,32.0,20.0 |
| |
| Democrats (188),36,34,31 |
| Other Republicans (211),54,32,14 |
| Freedom Caucus Republicans (36),72,28,- |
| Total (435 members),47,32,20 |
| |
| 1986,7.5,0.0 |
| 1990,8.1,0.0 |
| 1994,10.3,0.0 |
| 1998,12.4,0.0 |
| 2002,14.5,0.0 |
| 2006,17.3,5.6 |
| 2010,21.3,6.6 |
| 2014,25.1,6.8 |
| 2018,29.1,0.0 |
| |
| 1986,0.0,7.5 |
| 1990,2.9,8.1 |
| 1994,3.5,10.3 |
| 1998,4.1,12.4 |
| 2002,4.5,14.5 |
| 2006,5.6,17.3 |
| 2010,6.6,21.3 |
| 2014,6.8,25.1 |
| 2018,6.8,29.1 |
| |
| Costa Rica,173 |
| Colombia,175 |
| Slovenia,262 |
| |
| Costa Rica,173 |
| Colombia,175 |
| Slovenia,262 |
| "93.45Country,""Scheduled teaching time that teachers are in the classroom, 2002 to 2016" |
| Egypt,93.45 |
| Tunisia,89.89 |
| Madagascar,58.09 |
| Mozambique,44.0 |
| "0.4372Country,""Scheduled teaching time that teachers are in the classroom, 2002 to 2016" |
| Egypt,93.45 |
| Tunisia,89.89 |
| Madagascar,58.09 |
| Mozambique,44.0 |
| |
| 2014,,25,,29,20 |
| 2009,5,25,12,36,15 |
| 2004,6,28,13,37,,11 |
| 1999,,29,,9,8 |
| 1994,,35,,30,14 |
| 1989,8,35,,30,8 |
| 1984,10,30,,11,5 |
| 1979,12,27,,42,7 |
| |
| 2014,25,9,29,20,7 |
| 2009,5,25,12,36,15 |
| 2004,6,28,13,,0 |
| 1999,,29,,37,8 |
| 1994,5,35,,30,14 |
| 1989,8,35,,30,8 |
| 1984,10,30,37,11,0 |
| 1979,12,27,,42,7 |
| |
| Net open position in foreign exchange to capital,302.38,302.38 |
| Non-performing loans net of provisions to capital,103.88,103.88 |
| Liquid assets to short term liabilities,52.42,52.42 |
| Non-performing loans to total gross loans,15.12,15.12 |
| Regulatory capital to assets,4.0,4.0 |
| Return on assets,0.1,0.1 |
| "111.35Country,""Regulation of financial markets, Dominica, 2015" |
| ""Net open position in foreign exchange to capital"",302.38 |
| ""Non-performing loans net of provisions to capital"",103.88 |
| ""Liquid assets to short term liabilities"",52.42 |
| ""Non-performing loans to total gross loans"",15.12 |
| ""Regulatory capital to assets"",4.0 |
| ""Return on assets"",0.1 |
| |
| Dem/Lean Dem,58.0,27.0,15 |
| Re p/Lean Rep,48.0,,10 |
| Women,58.0,28.0,13 |
| Men,46.0,39.0, |
| Total,52.0,,13 |
| |
| Dem/Lean Dem,58,27,15 |
| Rep/Lean Rep,48,41,10 |
| Women,58,28,13 |
| Men,46,39,14 |
| Total,52,33,13 |
| |
| Portugal,84.0 |
| Italy,80.0 |
| France,83.0 |
| UK,91.5 |
| U.S.,92.9 |
| |
| Portugal,84.0 |
| Italy,80.3 |
| |
| Liberal,11,89 |
| Cons/Mod,20,80 |
| Dem/Lean Dem,15,84 |
| Mod/Lib,34,65 |
| Conservative,63,36 |
| Rep/Lean Rep,51,48 |
| Total,32,67 |
| |
| Liberal,89.0,0 |
| Cons/Mod,80.0,0 |
| Dem/Lean Dem,84.0,15 |
| Mod Lib,65.0,34 |
| Conser vative,36.0,63 |
| Rep/Lean Rep,48.0,51 |
| Total,32.0,0 |
| |
| Across the United States,23.0,57,16,0 |
| Your state,55.0,33,64,0 |
| Your local area,68.0,27,0,0 |
| ""Officials who run elections in.."",0.0,0,0,0 |
| ""Poll workers in your community"",68.0,24,0,0 |
| |
| Across the United States,23,57,16,0 |
| Your state,55,33,64,0 |
| Your local area,68,27,0,0 |
| ""Runction election officials in..."","""",0,0,0 |
| ""Poll workers in your community"",68,24,4,0 |
| |
| Dem/Lean Dem,54.0, |
| Rep/Lean Rep,82.0,15.0 |
| 50+,73.0,23.0 |
| 30-49,59.0,35.0 |
| Ages 18-29,54.0, |
| Total,64.0,31.0 |
| |
| Dem/Lean Dem,54,42 |
| Rep/Lean Rep,82,15 |
| 50+,73,23 |
| 30-49,59,35 |
| Ages 18-29,54,41 |
| Total,64,31 |
| |
| 2006,0,0 |
| 2007,0,0 |
| 2008,47,0 |
| 2009,36,0 |
| 2010,5958,38 |
| 2011,0,0 |
| 2012,0,0 |
| 2013,69,0 |
| |
| 2006,0,0 |
| 2007,0,0 |
| 2008,0,0 |
| 2009,36,0 |
| 2010,3436,5958 |
| 2011,38,63 |
| 2012,0,0 |
| 2013,0,0 |
| |
| 65+,32,49 |
| 50-64,46,43 |
| 30-49,43,34 |
| Ages 18-29,40,26 |
| All adults,41,38 |
| |
| 65+,32,49 |
| 50-64,46,43 |
| 30-49,43,34 |
| Ages 18-29,40,26 |
| All adults,41,38 |
| "NicaraguaCountry,""Share of children with diarrhea receiving treatment, 1995" |
| Thailand,73.3 |
| Nicaragua,55.7 |
| Lesotho,35.0 |
| "YesCountry,""Share of children with diarrhea receiving treatment, 1995" |
| Thailand,73.3 |
| Nicaragua,55.7 |
| Lesotho,35.0 |
| |
| Gender,,8, |
| Race or ethnicity,,19,73 |
| Whether a relative attended the school,24,68,0 |
| Athletic ability,34,57,0 |
| Being first person in family to go to college,20,27,53 |
| Community service involvement,21,48,30 |
| Standardized test scores,47,41, |
| High school grades,,26,0 |
| |
| Gender,14.0,81,0 |
| Race or ethnicity,19.0,73,0 |
| Whether a relative attended the school,8.0,24,68 |
| Athletic ability,8.0,34,57 |
| Being first person in family to go to college,20.0,27,53 |
| Community service involvement,21.0,48,30 |
| Standardized test scores,47.0,41,11 |
| High school grades,67.0,26,0 |
| |
| North Macedonia,232.40487354228015,235.8983850309457,174.21440454074625,177.24576185776627,168.20947908789046,168.11640832074063,151.49755974738403,156.41565011726202 |
| Tonga,63.24167509234837,53.60937452735646,50.80097209645964, |
| |
| Solomon Islands,255.39999999999885,252.6999999999998,244.9999999999998,248.3999999999998,247.9999999999997,215.1499999999997,272.88,255.4 |
| North Macedonia,205.7675573153598,214.9246918703593,177.6427290768639,169.1342804851085,190.31558307 |
| |
| 2007,0,50 |
| 2008,20,36 |
| 2009,20,0 |
| 2010,24,18 |
| 2011,18,0 |
| 2012,31,0 |
| 2013,33,27 |
| 2014,40,40 |
| 2015,40,0 |
| 2016,44,30 |
| |
| 2007,0,50 |
| 2008,20,0 |
| 2009,20,0 |
| 2010,24,0 |
| 2011,,0 |
| 2012,31,0 |
| 2013,33,0 |
| 2014,35,40 |
| 2015,37,40 |
| 2016,30,0 |
| "977633Country,""Annual CO2 emissions from deforestation for food production" |
| South Korea,21.32 |
| Spain,19.72 |
| Slovenia,977633 |
| "1.42Country,""Annual CO2 emissions from deforestation for food production" |
| South Korea,21.32 |
| Spain,19.72 |
| Slovenia,977633.0 |
| "4Country,""Deaths from eating disorders, 1990" |
| Cote d'Ivoire,1 |
| Iceland,1 |
| Mali,1 |
| Mauritius,1",4 |
| "NoCountry,""Deaths from eating disorders, 1990"" |
| Cote d'Ivoire,1 |
| Iceland,1 |
| Mali,1 |
| Mauritius,1 |
| |
| Silent/Greatest (69 and older),52.0,6.0,8.0,26.0,0 |
| Boomer (50-68),57.0,88.0,20.0,,0 |
| Gen X (34-49),63.0,,7.0,16.0,,0 |
| Millennial adults (18-33),65.0,10.0,,16.0,,0 |
| Youngerthan 18,69.0,8.0,,15.0,,0 |
| |
| Silent/Greatest (69 and older),52.0,6.0,26.0,8.0,0 |
| Boomer (50-68),57.0,8.0,20.0,6.0,0 |
| Gen X (34-49),63.0,10.0,,16.0,0 |
| Millennial adults (18-33),65.0,10.0,616.0,,0 |
| Youngerthan 18,69.0,8.0,,15.0,0 |
| |
| 98,23,8,17 |
| ,0,0,0 |
| 02,15,0,0 |
| 04,25,22,15 |
| 06,23,0,23 |
| 08,23,15,24 |
| 10,18,11,23 |
| 12,16,11,21 |
| |
| 98,23,17,8 |
| 00,21,0,0 |
| 02,22,15,0 |
| 04,22,0,0 |
| 06,23,11,0 |
| 08,24,15,18 |
| 10,23,11,18 |
| 12,21,,16 |
| |
| Unaffiliated,82.0,,18 |
| Roman Catholic,69.0,27,0 |
| College degree,81.0,14,0 |
| No colle ge degree,,26,0 |
| Women,79.0,19,0 |
| Men,70.0,28,0 |
| Total,74.0,23,0 |
| |
| Unaffiliated,82,18.0 |
| Roman Catholic,69,2.0 |
| College degree,81,14.0 |
| No colle ge degree,71,26.0 |
| Women,79,,19.0 |
| Men,70,28,0.0 |
| Total,74,23,0.0 |
| |
| Dem/Lean Dem,36,9.0,27.0,,62 |
| Rep/Lean Rep,14,,3.0,32.0,85 |
| Total,26,19.0,,3.0,72 |
| |
| Dem/Lean Dem,36.0,9.0,27.0,42.0,20 |
| Rep/Lean Rep,14.0,,32.0,54.0,85 |
| Total,26.0,19.0,,35.0,72 |
| |
| Moderation in enforcement,68 |
| No choice,11 |
| Vigorous enforcement,19 |
| |
| No choice,No choice |
| Moderation in enforcement,68 |
| Vigorous enforcement,19 |
| "2.8Country,""Population of all world regions, including the UN projection until 2100, 1950" |
| World,-,2.54 |
| Asia,-,1.4 |
| Europe -,-,549.33 |
| Africa -,-,227.79 |
| Northern America,-,172.6 |
| South America,-,113.77 |
| "YesCountry,""Population of all world regions, including the UN projection until 2100, 1950" |
| World,-2.54 |
| Asia,-1.4 |
| Europe,-549.33 |
| Africa,-227.79 |
| Northern America,-172.6 |
| South America,-113.77 |
| "2.42Country,""Cereal yield, 2001" |
| Serbia and Montenegro,4.26 |
| South America,3.19 |
| India,2.42 |
| Liberia,1.12 |
| Rwanda,0.91 |
| "1.09Country,""Cereal yield, 2001" |
| Serbia and Montenegro,4.26 |
| South America,3.19 |
| India,2.42 |
| Liberia,1.12 |
| Rwanda,0.91 |
| |
| toward others,11,32,37,19 |
| Are abusive or,11,32,37,19 |
| in dangerous or troubling behavior,19,42,25,14 |
| people Show engaging in,19,42,25,14 |
| or false untrue or,15,48,23,12 |
| Seem obviously,15,48,23,12 |
| |
| Are abusive or demearing toward others,11,32,,19 |
| ""Show people engaging in dangerous or troubling behavior"",19,42,25.0, |
| ""Seem obviously false or untrue"",15,48,23.0,12 |
| |
| Fourth or higher generation,50,50 |
| Third generation,77,23 |
| Second generation,92,8 |
| Foreign born,97,3 |
| |
| ""Fourth or higher generation"",50,50 |
| Third generation,77,23 |
| Second generation,92, |
| Foreign born,97,0 |
| |
| Worried,22.0,46,23,0 |
| Enthusiastic,15.0,34,30,19 |
| |
| Worried,-,22.0,46.0,23 |
| Enthusiastic,15.0,34.0,30.0,19 |
| "LD, LDPECountry,""Primary plastic production by polymer type, 2015" |
| PP,68 |
| LD, LDPE,64 |
| ""PP&A fibers"",59 |
| HDPE,52 |
| PVC,38 |
| PET,33 |
| PUT,27 |
| Additives,25 |
| PS,25 |
| "3Country,""Primary plastic production by polymer type, 2015" |
| PP,68 |
| ""LD, LDPE"",64 |
| ""PP&A fibers"",59 |
| HDPE,52 |
| PVC,38 |
| PET,33 |
| PUT,27 |
| Additives,25 |
| PS,25 |
| |
| Christian,3292.0 |
| Other religions,821.0 |
| Unaffiliated,7.0 |
| Muslim,3410.0 |
| |
| Unaffiliated,71.0 |
| Christian,3292.0 |
| Moslim,3410.0 |
| Other religions,821.0 |
| |
| Stay about the same,31 |
| Decrease,39 |
| Increase,30 |
| |
| Stay about the same,31 |
| Decrease,39 |
| Increase,30 |
| |
| Finland,74.8,76.7,77.2,77.4,77.6,77.4,76.9,76.4,76.3 |
| Ethiopia,16.2,16.1,16.6,16.7,16.6,17.2,17.2,17.7,17.5 |
| Saudi Arabia,22.4,22.4,22.9,23.5,23.2,21.8,22.4,21.6,22.9 |
| Cocos Islands,100.0,100.0,100.0,100.0,100.0,100.0,100.0,100.0,100.0 |
| |
| Finland,68.8,69.2,69.5,70.1,70.6,71.2,71.2,72.0,74.9,80.0 |
| Cocos Islands,100.0,100.0,100.0,100.0,100.0,100.0,100.0,100.0,100.0,100.0 |
| Ethiopia,20.2,16.0,20.0,21.0,22.1,20.0,24.0,21.0,21.0,21.0 |
| Saudi Arabia,31.2,23.0,28.0,25.0,31.0,32.0,3 |
| |
| Fewer,29 |
| Don't know,30 |
| More,13 |
| About the same,11 |
| None at all (VOL),16",30 |
| "GrayEntity,Value |
| Fewer,29 |
| No know at all,16 |
| Don't know,30 |
| About the same,11 |
| More,13 |
| |
| 2000,50,44 |
| 2004,67,0 |
| 2008,63,32 |
| 2012,63,34 |
| 2016,74,22 |
| 2020,83,16 |
| |
| 2000,50,0 |
| 2004,67,29 |
| 2008,63,32 |
| 2012,63,34 |
| 2016,74,22 |
| 2020,83,16 |
| |
| Dem/Lean Dem,50.0,48 |
| Rep/Lean Rep,65.0,32 |
| Total,57.0,41 |
| |
| Dem /Lean Dem,50,48 |
| Rep/Lean Rep,65,32 |
| Total,57,41 |
| |
| 1971,25,61, |
| 1981,26,59, |
| 1991,27,56, |
| 2001,28,54, |
| 2011,29,51,20.0 |
| 2016,29,52,19.0 |
| |
| 1971,25,61,14 |
| 1981,26,59,15 |
| 1991,27,56,17 |
| 2001,28,54,18 |
| 2011,29,51,20 |
| 2016,29,52,19 |
| |
| 2002,71,20 |
| 2004,0,26 |
| 2006,62,32 |
| 2008,56,43 |
| 2010,65,34 |
| 2012,46,32 |
| 2014,45,36 |
| 2016,0,0 |
| 2018,0,0 |
| |
| 2002,71,20 |
| 2004,69,26 |
| 2006,62,32 |
| 2008,56,36 |
| 2010,59,34 |
| 2012,46,37 |
| 2014,56,36 |
| 2016,58,37 |
| 2018,0,0 |
| |
| 2013,0,50 |
| 2014,39,23 |
| 2015,15,0 |
| |
| 2013,50,51 |
| 2014,39,0 |
| 2015,31,- |
| |
| 2002,0,20 |
| 2004,69,26 |
| 2006,62,32 |
| 2008,65,36 |
| 2010,59,34 |
| 2012,46,32 |
| 2014,558,36 |
| 2017,58,37 |
| |
| 2002,20,0 |
| 2004,69,26 |
| 2006,0,32 |
| 2008,0,36 |
| 2010,0,34 |
| 2012,0,0 |
| 2014,56,36 |
| 2017,58,37 |
| |
| 2009,0,50 |
| 2011,56,51 |
| 2013,59,39 |
| 2015,56,43 |
| 2017,78,0 |
| |
| 2009,61,48 |
| 2011,56,51 |
| 2013,59,39 |
| 2015,56,43 |
| 2017,78,0 |
| |
| 92,68,16 |
| 96,49,36 |
| 0,34,46 |
| 4,72,14 |
| 8,54,27 |
| 12,68,19 |
| 16,92,0 |
| |
| 92,68,16 |
| 96,49,36 |
| 0,46,34 |
| 0,0,0 |
| |
| 2006,0,0 |
| 2016,86,0 |
| |
| 2006,71,27 |
| 2016,86,11 |
| |
| Disapprove,31,29,30,26,28 |
| Approve,0,0,63,63,64 |
| |
| Aug 2014,54,53 |
| Oct 2014,33,0 |
| Feb 2015,30,63 |
| July 2015,26,63 |
| Dec 2015,28,0 |
| |
| 1969,84,12 |
| 1974,30,0 |
| 1979,66,0 |
| 1984,81,0 |
| 1994,31,0 |
| 1999,63,0 |
| 2004,32,60 |
| 2009,52,0 |
| 2014,45,52 |
| |
| 1969,84,0 |
| 1974,0,30 |
| 1979,66,0 |
| 1984,0,0 |
| 1989,0,81 |
| 1994,0,0 |
| 1999,31,63 |
| 2004,0,32 |
| 2009,0,52 |
| 2014,0,45 |
| |
| 2009,0,32 |
| 2010,23,53 |
| 2011,19,57 |
| 2012,23,59 |
| 2013,33,38 |
| 2014,25,51 |
| |
| 2009,32,48,0 |
| 2010,23,53,0 |
| 2011,19,57,- |
| 2012,23,59,- |
| 2013,-,38,0 |
| 2014,25,51,0 |
| |
| 2008,44,29 |
| 2009,45,28 |
| 2010,40,0 |
| 2011,0,0 |
| 2012,57,28 |
| 2013,53,33 |
| 2014,49,34 |
| |
| 2008,0,29 |
| 2009,28,45 |
| 2010,40,44 |
| 2011,37,0 |
| 2012,28,57 |
| 2013,33,53 |
| 2014,0,49 |
| |
| Jan,0,0 |
| Feb,51,0 |
| Mar,0,0 |
| Apr,0,0 |
| May,51,0 |
| Jun,49,0 |
| |
| Jan,52,0 |
| Feb,0,0 |
| Mar,47,0 |
| Apr,0,0 |
| May,51,0 |
| Jun,0,0 |
| |
| Sept 2008,0,28 |
| Apr 2009,68,0 |
| Feb 2010,0,31 |
| June 2010,52,0 |
| Oct 2010,0,41 |
| Mar 2011,0,57 |
| |
| Sept 2008,0,0 |
| Apr 2009,0,0 |
| Feb 2010,63,0 |
| June 2010,0,44 |
| Oct 2010,51,0 |
| Mar 2011,0,0 |
| |
| 1993,0,0 |
| 1999,0,0 |
| 2003,0,0 |
| 2008,0,0 |
| 2011,0,0 |
| |
| 1993,57,34 |
| 1999,65,30 |
| 2008,58,37 |
| 2011,50,46 |
| |
| Not only disagree over and plans but policies,73 |
| Can agree on basic facts,even if they often disagree over and policies,26 |
| |
| Not only disagree over plans and policies,73 |
| Can agree on basic facts, if they often disagree over plans and policies,26 |
| |
| DK,3 |
| Disapprove,39 |
| Approve,58 |
| |
| DK,3 |
| Disapprove,39 |
| Approve,58 |
| |
| Focus on scie entific work/stay out of public policy debates,13 |
| Take active role in public policy debates about science & technology,87 |
| |
| Focus on scie nnific public policy debates,13 |
| Take active role in public policy debates about science technology,87 |
| |
| U.S has responsibility,39 |
| U.S doesn't have responsibility,55 |
| Don't know,6 |
| |
| U.S has responsibility,39 |
| Don't know,6 |
| U.S doesn't have responsibility,55 |
| |
| Somewhat unfavorable,3 |
| Favora ble,10 |
| Very unfavorable,79 |
| Don 't know,8",10 |
| "88Entity,Value |
| Somewhat unfavorable,3 |
| Very unfavorable,79 |
| Don't know,88 |
| Favorable,10 |
| |
| Do not go online,41 |
| Go online,no SNS,,32 |
| Use SNS,27 |
| |
| Do not go online,41 |
| Go online, no SNS,32 |
| Use SNS,27 |
| |
| Providing treatment,67 |
| Prosecuting drug users,26 |
| Don't know,7",67 |
| "YesEntity,Value |
| Providing treatment,67 |
| Prosecuting drug users,26 |
| Don't know,7 |
| |
| Bad,22 |
| Don't know/ Refused (VOL),4 |
| Good,75",Bad |
| "53Entity,Value |
| Don't know/ Refused (VOL),4 |
| Bad,22 |
| Good,75 |
| |
| Better off,72 |
| Less well off,5 |
| About the same,16 |
| |
| About the same,16 |
| Less off,5 |
| Better off,72 |
| |
| Don't know,11 |
| ""Not too important/ should not be done"",13 |
| Top priority,35 |
| Important, but lower priority,40","Important, but lower priority" |
| "40Entity,Value |
| Not too important/ should not be done,13 |
| Top priority,35 |
| Important, but lower priority,40 |
| Don't know,11 |
| |
| Satisfied,20 |
| DK,2 |
| Dissa tisfied,78 |
| |
| Satisfied,20 |
| DK,2 |
| Dissatisfied,78 |
| |
| DK,6 |
| Not safe,76 |
| Safe,19 |
| |
| Not sate,76 |
| DK,6 |
| Safe,19 |
| |
| Dem/Lean Dem,,29,60 |
| Rep/Lean Rep,,30,62 |
| Total,,29,61 |
| |
| Dem/Lean Dem,,29,60 |
| Rep/Lean Rep,,30,62 |
| Total,9.0,29,61 |
| |
| 65+,23,36,34 |
| 50-64,34,41,24 |
| 30-49,47,45,0 |
| Ages 18-29,53,43,0 |
| U.S adults,40,42,16 |
| |
| 65+,23,36.0,34 |
| 50-64,34,41.0,24 |
| 30-49,47,45.0,0 |
| Ages 18-29,53,43.0,0 |
| U.S adults,40,42.0,16 |
| |
| Elected officials,24,45,30 |
| Food ind ustry lea ders,42,41,15 |
| The general public,57,32,10 |
| Smallfarm owners,60,30,0 |
| Scientists,60,28,11 |
| |
| Elected officials,24,45,30 |
| leaders,42,41,15 |
| Food ind ustry,42,41,15 |
| The general public,57,32,10 |
| Smallfarm owners,60,30,0 |
| Scientists,60,28,11 |
| |
| Elected officials,24,45,30 |
| leaders,42,,15 |
| Food ind ustry leaders,42,41,15 |
| The general public,57,32,10 |
| Small farm owners,60,30,9 |
| Scientists,60,28,11 |
| |
| Elected officials,24,45,30 |
| Food ind ustry leaders,42,41,15 |
| The general public,57,32,10 |
| Small farm owners,60,30,0 |
| Scientists,60,28,,0 |
| |
| Tensions with Russia,33 |
| Large number of refugees leaving Iraq/Syria,39 |
| U.S power and influence,52 |
| Global economic instability,59 |
| China's emergence as a world power,63 |
| Global climate change,68 |
| ISIS,69 |
| countries,71 |
| Cyberattacks from other,71",Japan |
| "46.5Entity,Values |
| Tensions with Russia,33 |
| Large number of refugees leaving Iraq/Syria,39 |
| U.S power and influence,52 |
| Global economic instability,59 |
| China's emergence as a world power,63 |
| Global climate change,68 |
| ISIS,69 |
| countries,71 |
| "5.32Country,""Share of children who are wasted, 2010" |
| Haiti,6.12 |
| Libya,5.32 |
| Morocco,5.11 |
| Lebanon,4.5 |
| Colombia,1.45 |
| "24.65Country,""Share of children who are wasted, 2010" |
| Haiti,6.12 |
| Libya,5.32 |
| Morocco,5.11 |
| Lebanon,4.5 |
| Colombia,1.45 |
| "GreenCountry,""Daily meat consumption per person, 1997" |
| Finland,175.09 |
| Georgia,79.84 |
| Western Asia,69.62 |
| "YesCountry,""Daily meat consumption per person, 1997" |
| Finland,175.09 |
| Georgia,79.84 |
| Western Asia,69.62 |
| "RedCountry,""Deaths from natural disasters as a share of total deaths, 2014" |
| Ecuador,0.02 |
| China,0.02 |
| Ireland,-0.01 |
| Armenia,0 |
| Israel,0 |
| "NoCountry,""Deaths from natural disasters as a share of total deaths, 2014" |
| Ecuador,0.02 |
| China,0.02 |
| Ireland,0.01 |
| Armenia,0.0 |
| Israel,0.0 |
| "Heart diseaseCountry,""Death rates through the 20th century, United States, 1966" |
| Heart disease,371.7 |
| Cancers,155.3 |
| Stroke,104.7 |
| Accidents,58.1 |
| Pneumonia and influenza,32.5 |
| Road accidents,27.1 |
| Diabetes,17.7 |
| Suicide,10.9 |
| Tuberculosis,3.9 |
| "NoCountry,""Death rates through the 20th century, United States, 1966" |
| Heart disease,371.7 |
| Cancers,155.3 |
| Stroke,104.7 |
| Accidents,58.1 |
| Pneumonia and influenza,32.5 |
| Road accidents,27.1 |
| Diabetes,17.7 |
| Suicide,10.9 |
| Tuberculosis,3.9 |
| "North AmericaCountry,""Installed geothermal energy capacity, 2005" |
| North America,3245 |
| Philippines,1846.5 |
| Croatia,0 |
| "YesCountry,""Installed geothermal energy capacity, 2005" |
| North America,3245 |
| Philippines,1846.5 |
| Croatia,0 |
| "ObesityCountry,""Disease burden by risk factor,Northern Mariana Islands, 1990" |
| Obesity,1001 |
| High blood sugar,879 |
| High blood pressure,676 |
| Smoking,474 |
| Air pollution (outdoor & indoor),360 |
| High cholesterol,328 |
| Outdoor air pollution,177 |
| Diet low in vegetables,169 |
| Indoor air pollution,168 |
| Diet low in fruits,164 |
| Drug use,144 |
| Secondhand smoke,133 |
| Diet high in salt,131 |
| Iron deficiency,119 |
| Child wasting,86 |
| Low physical activity,76 |
| Vitamin A deficiency,43 |
| Unsafe water source,38 |
| Unsafe sanitation,0 |
| Nonexclusive breastfeeding,8 |
| Child stunting,7 |
| Zinc deficiency,3 |
| "111Country,""Disease burden by risk factor,Northern Mariana Islands, 1990" |
| Obesity,1001 |
| High blood sugar,879 |
| High blood pressure,676 |
| Smoking,474 |
| ""Air pollution (outdoor & indoor)"",360 |
| High cholesterol,328 |
| ""Outdoor air pollution"",177 |
| ""Diet low in vegetables"",169 |
| ""Indoor air pollution"",168 |
| ""Diet low in fruits"",164 |
| Drug use,144 |
| Secondhand smoke,133 |
| ""Diet high in salt"",131 |
| ""Iron deficiency"",119 |
| Child wasting,86 |
| Low physical activity,76 |
| ""Vitamin A deficiency"",43 |
| ""Unsafe water source"",38 |
| ""Unsafe sanitation"",9 |
| ""Nonexclusive breastfeeding"",8 |
| Child stunting,- |
| Zinc deficiency,3 |
| "2Country,""Share of teachers in pre-primary education who are trained, 2004" |
| Cayman Islands,95.45 |
| Belize,7.21 |
| "50.225Country,""Share of teachers in pre-primary education who are trained, 2004" |
| Cayman Islands,95.45 |
| Belize,7.21 |
| "2Country,""Death rates from cocaine overdoses, 2011" |
| United States Virgin Islands,0.13 |
| Gabon,0.13 |
| Southern Sub-Saharan Africa,0.07 |
| Tonga,0.01 |
| |
| United States Virgin Islands,0.13,0.13 |
| Gabon,0.13,0.13 |
| Southern Sub-Saharan Africa,0.07,0.07 |
| Tonga,0.01,,,0.01 |
| "0.1Country,""Government expenditure on pre-primary education as share of GDP, 2005" |
| United Kingdom,0.3 |
| Colombia,0.1 |
| Mauritius,0.06 |
| "11.67Country,""Government expenditure on pre-primary education as share of GDP, 2005" |
| United Kingdom,0.3 |
| Colombia,0.1 |
| Mauritius,0.06 |
| "1.93Country,""Rapeseed yields, 1976" |
| Europe,2.16 |
| France,1.93 |
| Argentina,0.67 |
| |
| Europe,2.16 |
| France,1.93 |
| Argentina,0.67 |
| "Low bone mineral densityCountry,""Number of deaths by risk factor aged 15-49, World, 2004" |
| Unsafe sex,1.31 |
| Alcohol use,880756 |
| High blood pressure,619328 |
| Smoking,597653 |
| High body-mass index (obesity),409812 |
| High blood sugar,334864 |
| ""Diet low in fruits"",316783 |
| Drug use,226833 |
| ""Diet low in vegetables"",200275 |
| ""Outdoor air pollution"",194601 |
| ""Household air pollution"",181256 |
| ""Unsafe water source"",122777 |
| ""Secondhand smoke"",105318 |
| Iron deficiency,96915 |
| ""Poor sanitation"",92072 |
| ""No access to handwashing facility"",68467 |
| ""Low physical activity"",48930 |
| ""Low bone mineral density"",13135 |
| "YesCountry,""Number of deaths by risk factor aged 15-49, World, 2004" |
| Unsafe sex,1.31 |
| Alcohol use,880756.0 |
| High blood pressure,619328.0 |
| Smoking,597653.0 |
| High body-mass index (obesity),409812.0 |
| High blood sugar,334864.0 |
| Diet low in fruits,316783.0 |
| Drug use,226833.0 |
| Diet low in vegetables,200275.0 |
| Outdooor air pollution,194601.0 |
| Household air pollution,181256.0 |
| Unsafe water source,122777.0 |
| Secondhand smoke,105318.0 |
| Iron deficiency,96915.0 |
| Poor sanitation,92072.0 |
| No access to handwashing facility,68467.0 |
| Low physical activity,48930.0 |
| Low bone mineral density,13135 |
| "27.5Country,""Mortality from non-communicable diseases, 2000" |
| Mali,27.5 |
| Denmark,18.3 |
| Kenya,17.3 |
| "10.2Country,""Mortality from non-communicable diseases, 2000" |
| Mali,27.5 |
| Denmark,18.3 |
| Kenya,17.3 |
| "12Country,""Land use per 100 grams of protein" |
| Lamb & Mutton,184.8 |
| Beef (beef herd),163.6 |
| Cheese,39.8 |
| Milk,27.1 |
| Beef (dairy herd),21.9 |
| Pig Meat,10.7 |
| Nuts,7.9 |
| Other Pulses,7.3 |
| Poultry Meat,7.1 |
| Eggs,5.7 |
| Grains,4.6 |
| Fish (farmed),3.7 |
| Groundnuts,3.5 |
| Peas,3.4 |
| Tofu (soybeans),2.2 |
| Prawns (farmed),2.0 |
| "YesCountry,""Land use per 100 grams of protein" |
| Lamb & Mutton,184.8 |
| Beef (beef herd),163.6 |
| Cheese,39.8 |
| Milk,27.1 |
| Beef (dairy herd),21.9 |
| Pig Meat,10.7 |
| Nuts,7.9 |
| Other Pulses,7.3 |
| Poultry Meat,7.1 |
| Eggs,5.7 |
| Grains,4.6 |
| Fish (farmed),3.7 |
| Groundnuts,3.5 |
| Peas,3.4 |
| Tofu (soybeans),2.2 |
| Prawn (farmed),2 |
| "2Country,""Government expenditure on secondary education as share of GDP, 2006" |
| Cuba,3.52 |
| Nicaragua,0.28 |
| "3.24Country,""Government expenditure on secondary education as share of GDP, 2006" |
| Cuba,3.52 |
| Nicaragua,0.28 |
| "CambodiaCountry,""Share of pregnant women who receive antiretroviral therapy, 2014" |
| Burkina Faso,75 |
| Cambodia,70 |
| "5Country,""Share of pregnant women who receive antiretroviral therapy, 2014" |
| Burkina Faso,75 |
| Cambodia,70 |
| "LithuaniaCountry,""Commercial bank branches, 2011" |
| Lithuania,19 |
| Bolivia,9.3 |
| "28.3Country,""Commercial bank branches, 2011" |
| Lithuania,19.0 |
| Bolivia,9.3 |
| "58Country,""Cashew nut yields, 1991" |
| Land Locked Developing Countries,0.6 |
| Low Income Food Deficit Countries,0.58 |
| World,0.52 |
| Least Developed Countries,0.43 |
| Brazil,0.29 |
| "0.455Country,""Cashew nut yields, 1991" |
| Land Locked Developing Countries,0.6 |
| Low Income Food Deficit Countries,0.58 |
| World,0.52 |
| Least Developed Countries,0.43 |
| Brazil,0.29 |
| "0.01Country,""Share of global domestic aviation passenger kilometers, 2018" |
| Egypt,0.01 |
| Namibia,0.0099998471334612 |
| Luxembourg,0.0 |
| "0.0141Country,""Share of global domestic aviation passenger kilometers, 2018" |
| Egypt,0.01 |
| Namibia,0.01 |
| Luxembourg,0.0 |
| "1.6Country,""Mental health as a risk factor for alcohol dependency or abuse" |
| Intermittent explosive disorder,6.0 |
| ""Dysthymia (persistent, mild depression)"",4.1 |
| Oppositional defiant disorder,3.9 |
| Bipolar disorder,3.6 |
| Social phobia,3.3 |
| Any anxiety disorder,3.2 |
| ""Post-traumatic stress disorder (PTSD)"",3.2 |
| Panic disorder,3.2 |
| ""Any disruptive behavior disorder"",2.8 |
| Separation anxiety,2.7 |
| Specific phobia,2.7 |
| ""Antisocial personality disorder"",2.4 |
| Agoraphobia,2.3 |
| Conduct disorder,2.0 |
| ""Attention deficit hyperactivity (ADHD)"",1.8 |
| Any mood disorder,1.8 |
| ""Generalized anxiety disorder (GAD)"",1.6 |
| Major depression,1.6 |
| "4.7Country,""Mental health as a risk factor for alcohol dependency or abuse" |
| Intermittent explosive disorder,6.0 |
| ""Dysthymia (persistent, mild depression)"",4.1 |
| ""Oppositional defiant disorder"",3.9 |
| Bipolar disorder,3.6 |
| ""Social phobia"",3.3 |
| Any anxiety disorder,3.2 |
| ""Post-traumatic stress disorder (PTSD)"",3.2 |
| Panic disorder,3.2 |
| ""Any disruptive behavior disorder"",2.8 |
| Separation anxiety,2.7 |
| Specific phobia,2.7 |
| ""Antisocial personality disorder"",2.4 |
| ""Agoraphobia"",2.3 |
| Conduct disorder,2.0 |
| ""Attention deficit hyperactivity (ADHD)"",1.8 |
| Any mood disorder,1.8 |
| ""Generalized anxiety disorder (GAD)"",1.6 |
| ""Major depression"",1.6 |
| "20.98Country,""Land use per 100 kilocalories by food and production type" |
| Mutton & Goat Meat (non-organic),20.98 |
| Beef (organic, grass-fed),13.55 |
| Beef (non-organic, grain-fed),8.27 |
| Mutton & Goat Meat (organic),4.64 |
| Beef (non-organic, grass-fed),3.01 |
| Pork (non-organic),1.17 |
| Poultry (organic),1.12 |
| Pork (organic),1.06 |
| Eggs (organic),0.52 |
| Milk (organic),0.45 |
| Poultry (non-organic),0.41 |
| Eggs (non-organic),0.34 |
| Barley (non-organic),0.27 |
| Milk (non-organic),0.23 |
| Wheat (non-organic),0.17 |
| Soybean (non-organic),0.08 |
| Potatoes (organic),0.08 |
| Tomatoes (non-greenhouse),0.07 |
| Wheat (organic),0.07 |
| Rice (non-organic),0. |
| "1.3875Country,""Land use per 100 kilocalories by food and production type" |
| ""Mutton & Goat Meat (non-organic)"",20.98 |
| ""Beef (organic, grass-fed)"",13.55 |
| ""Beef (non-organic, grain-fed)"",8.27 |
| ""Mutton & Goat Meat (organic)"",4.64 |
| ""Beef (non-organic, grass-fed)"",3.01 |
| ""Pork (non-organic)"",1.17 |
| ""Poultry (organic)"",1.12 |
| ""Pork (organic)"",1.06 |
| ""Eggs (organic)"",0.52 |
| ""Milk (organic)"",0.45 |
| ""Poultry (non-organic)"",0.41 |
| ""Eggs (non-organic)"",0.34 |
| ""Barley (non-organic)"",0.27 |
| ""Milk (non-organic)"",0.23 |
| ""Wheat (non-organic)"",0.17 |
| ""Soybean (non-organic)"",0.08 |
| ""Potatoes (organic)"",0.08 |
| ""Tomatoes (non-greenhouse)"",0.0 |
| "41Country,""Distribution of job finding methods for employed workers in Europeancountries, Greece" |
| Personalcontacts,41 |
| Directapplications,36 |
| Other,14.3 |
| Adverts,7.0 |
| Jobagencies,1.6 |
| "61Country,""Distribution of job finding methods for employed workers in Europeancountries, Greece" |
| Personalcontacts,41 |
| Direct applications,36 |
| Other,14.3 |
| Adverts,7.0 |
| Agencies,1.6 |
| "NepalCountry,""Tuberculosis incidence per 100,000 people, 2000" |
| Ghana,216 |
| Vietnam,197 |
| Nepal,163 |
| "YesCountry,""Tuberculosis incidence per 100,000 people,2000" |
| Ghana,216 |
| Vietnam,197 |
| Nepal,163 |
| "5.25Country,""Surface plastic particles by ocean basin, 2013" |
| Global ocean (total),5.25 |
| North Pacific,1.98 |
| Indian Ocean,1.3 |
| North Atlantic,931.0 |
| South Pacific,490.0 |
| South Atlantic,297.5 |
| Mediterranean Sea,247.4 |
| "769.8Country,""Surface plastic particles by ocean basin, 2013" |
| Global ocean (total),52.5 |
| North Pacific,1.98 |
| Indian Ocean,1.3 |
| North Atlantic,931.0 |
| South Pacific,490.0 |
| South Atlantic,297.5 |
| Mediterranean Sea,247.4 |
| "4Country,""Share of population with severe food insecurity, 2015 to 2017" |
| El Salvador,12.7 |
| Romania,4.0 |
| Moldova,2.8 |
| Luxembourg,0.8 |
| Switzerland,0.8 |
| "14.8Country,""Share of population with severe food insecurity, 2015 to 2017" |
| El Salvador,12.7 |
| Romania,4.0 |
| Moldova,2.8 |
| Luxembourg,0.8 |
| Switzerland,0.8 |
| "96.4Country,""Share of primary energy from fossil fuels, 1993" |
| Algeria,99.67 |
| Indonesia,96.4 |
| Portugal,87.63 |
| "YesCountry,""Share of primary energy from fossil fuels, 1993" |
| Algeria,99.67 |
| Indonesia,96.4 |
| Portugal,87.63 |
| "GreenCountry,""Corruption Perception Index, 2012" |
| Vanuatu,43 |
| Togo,30 |
| Somalia,8 |
| "38Country,""Corruption Perception Index, 2012" |
| Vanuatu,43 |
| Togo,30 |
| Somalia,8 |
| "MexicoCountry,""Almond yields, 2001" |
| Mexico,1.5 |
| ""Land Locked Developing Countries"",1.34 |
| Italy,1.2 |
| "1.35Country,""Almond yields, 2001" |
| Mexico,1.5 |
| Land Locked Developing Countries,1.34 |
| Italy,1.2 |
| "40.7Country,""Share of tropical deforestation from agricultural products" |
| Cattle,40.7 |
| Oilseeds,18.4 |
| Forestry logging,13.1 |
| Other cereals (excl. rice wheat),8.6 |
| Vegetables, fruit & nuts,7.3 |
| Paddy rice,5.6 |
| Other crops,3.6 |
| Sugar cane/beet,1.1 |
| Wheat,1.0 |
| Plant-based fibers,0.5 |
| "27.65Country,""Share of tropical deforestation from agricultural products" |
| Cattle,40.7 |
| Oilsseeds,18.4 |
| Forestry logging,13.1 |
| ""Other cereals (excl. rice & wheat)"",8.6 |
| ""Vegetables, fruit & nuts"",7.3 |
| Paddy rice,5.6 |
| ""Other crops"",3.6 |
| ""Sugar cane/beet"",1.1 |
| Wheat,1.0 |
| Plant-based fibers,0.5 |
| "2Country,""Share of wealth held by top 1% (Chartbook of Economic Inequality 2017),1923" |
| France,48.53 |
| United States,35.34 |
| "39.375Country,""Share of wealth held by top 1% (Chartbook of Economic Inequality 2017),1923" |
| France,48.53 |
| United States,35.34 |
| "BelarusCountry,""Ratio of inbound-to-outbound tourists, 2018" |
| Belarus,13.76 |
| Mauritius,4.73 |
| Hungary,2.03 |
| Papua New Guinea,0.59 |
| Luxembourg,0.51 |
| "0.5Country,""Ratio of inbound-to-outbound tourists, 2018" |
| Belarus,13.76 |
| Mauritius,4.73 |
| Hungary,2.03 |
| Papua New Guinea,0.59 |
| Luxembourg,0.51 |
| "MongoliaCountry,""Expected years of schooling, 2004" |
| Mongolia,11.8 |
| Namibia,11.6 |
| Tajikistan,10.6 |
| Mauritania,7.1 |
| Guam,5.6 |
| "YesCountry,""Expected years of schooling, 2004" |
| Mongolia,11.8 |
| Namibia,11.6 |
| Tajikistan,10.6 |
| Mauritania,7.1 |
| Chad,5.6 |
| "9.29Country,""Government expenditure on secondary education by country, 1974-2014,2003" |
| Czechia,21.37 |
| Paraguay,12.51 |
| Laos,9.29 |
| "YesCountry,""Government expenditure on secondary education by country, 1974-2014,2003" |
| Czechia,21.37 |
| Paraguay,12.51 |
| Laos,9.29 |
| "6Country,""Percentage of children who experience violent discipline at home" |
| Jamaica,85 |
| Niger,82 |
| Bangladesh,82 |
| Azerbaijan,77 |
| Albania,77 |
| |
| Jamaica,85 |
| Niger,82 |
| Bangladesh,82 |
| Azerbaijan,77 |
| Albania,77 |
| "6.85Country,""Personal remittances as a share of GDP, 1986" |
| Morocco,7.19 |
| Portugal,6.85 |
| Saint Lucia,6.2 |
| "NoCountry,""Personal remittances as a share of GDP, 1986" |
| Morocco,7.19 |
| Portugal,6.85 |
| Saint Lucia,6.2 |
| "4Country,""Share of population using at least basic drinking water source, 2000" |
| Iceland,100.0 |
| Hungary,99.96 |
| Turkey,95.49 |
| Cambodia,52.4 |
| "47.51Country,""Share of population using at least basic drinking water source, 2000" |
| Iceland,100.0 |
| Hungary,99.96 |
| Turkey,95.49 |
| Cambodia,52.4 |
| "3Country,""Alcohol consumption per person, 2016" |
| Slovenia,12.6 |
| Nauru,6.0 |
| Ecuador,4.4 |
| "NoCountry,""Alcohol consumption per person, 2016" |
| Slovenia,12.6 |
| Nauru,6.0 |
| Ecuador,4.4 |
| "GreeceCountry,""Share of social protection in government expenditure, 2010" |
| Greece,35.84 |
| Costa Rica,24.87 |
| United States,21.05 |
| "NoCountry,""Share of social protection in government expenditure, 2010" |
| Greece,35.84 |
| Costa Rica,24.87 |
| United States,21.05 |
| "BlueCountry,""Proportion of female employees by economic sector, Nepal, 2008" |
| Female share in services,27.85 |
| Female share in industry,42.33 |
| Female share in agriculture,60.65 |
| "YesCountry,""Proportion of female employees by economic sector, Nepal, 2008" |
| Female share in agriculture,60.65 |
| Female share in industry,42.33 |
| Female share in services,27.85 |
| "Human capitalCountry,""Total wealth by asset group (2014 US dollars), World, 1995 to 2014" |
| Human capital,742.07 |
| Produced capital,303.55 |
| Natural capital,107.43 |
| Net foreign assets $1.58 trillion,-4.58 |
| "Human capitalCountry,""Total wealth by asset group (2014 US dollars), World, 1995 to 2014" |
| Human capital,742.07 |
| Produced capital,303.55 |
| Natural capital,107.43 |
| Net foreign assets $4.58,-4.58 |
| "2015Country,""Primary plastic production by industrial sector, 2015" |
| Packaging,146 |
| ""Building and Construction"",65 |
| Textiles,59 |
| ""Other sectors"",47 |
| Consumer & Institutional Products,42 |
| Transportation,27 |
| Electrical/Electronic,18 |
| Industrial Machinery,3 |
| "153Country,""Primary plastic production by industrial sector, 2015" |
| Packaging,146 |
| ""Building and Construction"",65 |
| Textiles,59 |
| ""Other sectors"",47 |
| Consumer & Institutional Products,42 |
| ""Transportation"",27 |
| ""Electrical/Electronic"",18 |
| Industrial Machinery,3 |
| "48.01Country,""Emissions of air pollutants, Italy, 2008" |
| Nitrogen oxides (NOx),51.53 |
| Carbon Monoxide (CO),48.01 |
| Sulphur oxides (SO₂),16.22 |
| "29.6Country,""Emissions of air pollutant,s, Italy, 2008" |
| Nitrogen oxides (NOx),51.53 |
| Carbon Monoxide (CO),48.01 |
| Sulphur oxides (SO₂),16.22 |
| "0.04Country,""Change in stroke death rates by age, Belarus, 2011" |
| 70+ years old,1289.43 |
| 50-69 years old,201.38 |
| All ages,190.65 |
| Age-standardized,119.23 |
| 15-49 years old,16.4 |
| 5-14 years old,0.07 |
| Under-5s,0.04 |
| "16.4Country,""Change in stroke death rates by age, Belarus, 2011" |
| 70+ years old,1289.43 |
| 50-69 years old,201.38 |
| All ages,190.65 |
| Age-standardized,119.23 |
| 15-49 years old,16.4 |
| 5-14 years old,0.07 |
| Under-5s,0.04 |
| "56.6Country,""Child labor in Italy, 1901" |
| Boys,56.6 |
| Both sexes,49.9 |
| Girls,43.1 |
| "12.7Country,""Child labor in Italy, 1901" |
| Boys,56.6 |
| Both sexes,49.9 |
| Girls,43.1 |
| "0.69Country,""Agriculture orientation index for government expenditures, 2000" |
| Czechia,0.69 |
| United Arab Emirates,0.52 |
| Saint Lucia,0.36 |
| Qatar,0.11 |
| "0.265Country,""Agriculture orientation index for government expenditures, 2000" |
| Czechia,0.69 |
| United Arab Emirates,0.52 |
| Saint Lucia,0.36 |
| Qatar,0.11 |
| "24Country,""Protein efficiency of meat and dairy production" |
| Eggs,25 |
| Whole Milk,24 |
| Poultry,19.6 |
| Pork,8.5 |
| Lamb/mutton,6.3 |
| Beef,3.8 |
| "11.5Country,""Protein efficiency of meat and dairy production" |
| Eggs,25 |
| Whole Milk,24 |
| Poultry,19.6 |
| Pork,8.5 |
| Lamb/mutton,6.3 |
| Beef,3.8 |
| "SwitzerlandCountry,""Renewable freshwater resources per capita, 1987" |
| Switzerland,6172.55 |
| Portugal,3788.62 |
| Dominican Republic,3473.96 |
| Ghana,2247.54 |
| "114.77Country,""Renewable freshwater resources per capita, 1987" |
| Switzerland,6172.55 |
| Portugal,3788.62 |
| Dominican Republic,3473.96 |
| Ghana,2247.54 |
| "AlcoholCountry,""Number of deaths from substance use disorders, United Kingdom, 1990" |
| Other illicit drugs,548 |
| Alcohol,481 |
| Opioids,264 |
| Amphetamine,36 |
| Cocaine,24 |
| "524Country,""Number of deaths from substance use disorders, United Kingdom, 1990" |
| Other illicit drugs,548 |
| Alcohol,481 |
| Opioids,264 |
| Amphetamine,36 |
| Cocaine,24 |
| "PhilippinesCountry,""Palm oil yields, 1961" |
| Oceania,18.18 |
| Philippines,6.67 |
| Net Food Importing Developing Countries,5.8 |
| Gabon,5.63 |
| "YesCountry,""Palm oil yields, 1961" |
| Oceania,18.18 |
| Philippines,6.67 |
| Net Food importing Developing Countries,5.8 |
| Gabon,5.63 |
| "BrazilCountry,""Share of adults that are obese, 1989" |
| Brazil,9.8 |
| Japan,1.5 |
| Ethiopia,1.1 |
| Laos,0.8 |
| "2.8Country,""Share of adults that are obese, 1989" |
| Brazil,9.8 |
| Japan,1.5 |
| Ethiopia,1.1 |
| Lacs,0.8 |
| "United StatesCountry,""Sugar beet production, 1961" |
| United States,16.26 |
| Asia,6.02 |
| Hungary,2.36 |
| South America,423081.0 |
| "6.32Country,""Sugar beet production, 1961" |
| United States,16.26 |
| Asia,6.02 |
| Hungary,2.36 |
| South America,423081.0 |
| "95Country,""Share of one-year-olds vaccinated against hepatitis B (HepB3), 2003" |
| Mauritius,97 |
| Bhutan,95 |
| Italy,95 |
| Eswatini,90 |
| "YesCountry,""Share of one-year-olds vaccinated against hepatitis B (HepB3), 2003" |
| Mauritius,97 |
| Bhutan,95 |
| Italy,95 |
| Eswatini,90 |
| "Deaths from HIV/AIDSCountry,""Prevalence, new cases and deaths from HIV/AIDS, Cuba, 2010" |
| New infections of HIV/AIDS,2253 |
| Number of people living with HIV (x10),1294 |
| Deaths from HIV/AIDS,227 |
| "NoCountry,""Prevalence, new cases and deaths from HIV/AIDS, Cuba, 2010" |
| New infections of HIV/AIDS,2253 |
| Number of people living with HIV (x10),1294 |
| Deaths from HIV/AIDS,227 |
| "SamoaCountry,""Depth of the food deficit in kilocalories per person per day, 2010" |
| IDA blend,114.18 |
| Gambia,71.0 |
| Niger,71.0 |
| Mauritius,37.0 |
| Samoa,23.0 |
| "[Niger, Gambia]Country,""Depth of the food deficit in kilocalories per person per day, 2010" |
| IDA blend,114.18 |
| Gambia,71.0 |
| Niger,71.0 |
| Mauritius,37.0 |
| Samoa,23.0","[Gambia, Niger] |
| "$24,688.3Country,""Median household disposable income, 2000" |
| Austria,24770.5 |
| Norway,24688.3 |
| United Kingdom,18178.53 |
| "20005.2Country,""Median household disposable income, 2000" |
| Austria,24770.5 |
| Norway,24688.3 |
| United Kingdom,18178.53 |
| "11Country,""Number of deaths by risk factor aged 5-14, World, 2000" |
| Unsafe water source,59060 |
| Poor sanitation,45009 |
| No access to handwashing facility,32837 |
| Household air pollution,23473 |
| Outdoor air pollution,11326 |
| Secondhand smoke,8538 |
| Alcohol use,3909 |
| Unsafe sex,3877 |
| High blood sugar,2500 |
| Iron deficiency,396 |
| High body-mass index (obesity),221 |
| High blood pressure,189 |
| Drug use,43 |
| "YesCountry,""Number of deaths by risk factor aged 5-14, World, 2000" |
| Unsafe water source,59060 |
| Poor sanitation,45009 |
| No access to handwashing facility,32837 |
| Household air pollution,23473 |
| Outdoor air pollution,11326 |
| Secondhand smoke,8538 |
| Alcohol use,3909 |
| Unsafe sex,3877 |
| High blood sugar,2500 |
| Iron deficiency,396 |
| High body-mass index (obesity),221 |
| High blood pressure,189 |
| Drug use,43 |
| "5Country,""Prevalence of alcohol use disorders by age, East Asia, 2004" |
| 30-34 years old,1.9 |
| 25-29 years old,1.8 |
| 15-49 years old,1.65 |
| 50-69 years old,1.62 |
| 20-24 years old,1.48 |
| All ages,1.33 |
| Age-standardized,1.17 |
| 70+ years old,0.97 |
| 15-19 years old,0.58 |
| 10-19 years old,0.07 |
| 5-14 years old,0.04 |
| "NoCountry,""Prevalence of alcohol use disorders by age, East Asia, 2004" |
| 30-34 years old,1.9 |
| 25-29 years old,1.8 |
| 15-49 years old,1.65 |
| 50-69 years old,1.62 |
| 20-24 years old,1.48 |
| All ages,1.33 |
| Age-standardized,1.17 |
| 70+ years old,0.97 |
| 15-19 years old,0.58 |
| 10-19 years old,0.07 |
| 5-14 years old,0.04 |
| "Medium car (petrol)Country,""CO2 emissions by mode of transport, 2018" |
| Medium car (petrol),191.6 |
| Medium car (diesel),168.8 |
| Domestic flight,133.5 |
| Bus,103.9 |
| Motorcycle (medium),100.0 |
| Short-haul flight (economy),81.5 |
| Long-haul flight (economy),78.5 |
| National rail,40.8 |
| Eurostar (International rail),5.9 |
| "YesCountry,""CO2 emissions by mode of transport, 2018" |
| Medium car (petrol),191.6 |
| Medium car (diesel),168.8 |
| Domestic flight,133.5 |
| Bus,103.9 |
| Motorcycle (medium),100.0 |
| Short-haul flight (economy),81.5 |
| Long-haul flight (economy),78.5 |
| National rail,40.8 |
| Eurostar (International rail),5.9 |
| "MalawiCountry,""Proportion of labor force who are women, 2004" |
| Malawi,49.57 |
| Turkey,26.17 |
| Tunisia,26.01 |
| "1.881Country,""Proportion of labor force who are women, 2004" |
| Malawi,49.57 |
| Turkey,26.17 |
| Tunisia,26.01 |
| |
| Italy,22.0 |
| Sweden,35.0 |
| Ireland,38.0 |
| Norway,56.0","[Italy , 22] |
| "2.73Country,""Public health insurance coverage in Western Europe, 1935" |
| Norway,56 |
| Ireland,38 |
| Sweden,35 |
| Italy,22 |
| "15.08Country,""General government procurement as a percentage of GDP, OECD, 2015" |
| Slovakia,17.28 |
| Germany,15.05 |
| Poland,12.17 |
| Switzerland,8.76 |
| "28.412Country,""General government procurement as a percentage of GDP, OECD, 2015" |
| Slovakia,17.28 |
| Germany,15.05 |
| Poland,12.17 |
| Switzerland,8.76 |
| "BlueCountry,""Relative increase in mean heights of men born in 1996 vs. 1896" |
| New Zealand,6.12 |
| Tajikistan,6.12 |
| Algeria,6.04 |
| Russia,5.68 |
| Democratic Republic of Congo,3.06 |
| "0.12Country,""Relative increase in mean heights of men born in 1996 vs. 1896" |
| New Zealand,6.12 |
| Tajikistan,6.12 |
| Algeria,6.04 |
| Russia,5.68 |
| Democratic Republic of Congo,3.06 |
| "8.5Country,""Human Rights Violations, 2012" |
| Central African Republic,8.5 |
| Iraq,8.3 |
| Gabon,6.8 |
| Suriname,5.3 |
| Peru,4.9 |
| "15Country,""Human Rights Violations, 2012" |
| Central African Republic,8.5 |
| Ira q,8.3 |
| Gabon,6.8 |
| Suriname,5.3 |
| Peru,4.9 |
| "3.88Country,""How much food can you buy for working one hour in the manufacturingsector?, 1950" |
| Milk (1/2 gallon),3.88 |
| Flour (5 lb.),3.24 |
| Eggs (dozen),2.65 |
| Bacon (lb.),2.48 |
| Butter (lb.),2.18 |
| Pork chops (lb.),2.12 |
| Round steak (lb.),1.69 |
| "3Country,""How much food can you buy for working one hour in the manufacturingsector?, 1950" |
| Milk (1/2 gallon),3.88 |
| Flour (5 lb.),3.24 |
| Eggs (dozen),2.65 |
| Bacon (lb.),2.48 |
| Butter (lb.),2.18 |
| Pork chops (lb.),2.12 |
| Round steak (lb.),1.69 |
| "5668.67Country,""Disposable household income of the lowest decile in the incomedistribution, 2003" |
| Denmark,14868.49 |
| Germany,13633.5 |
| Australia,5946.35 |
| Greece,8484.68 |
| Slovakia,5668.67 |
| "10235.8Country,""Disposable household income of the lowest decile in the incomedistribution, 2003" |
| Denmark,14868.49 |
| Germany,13633.5 |
| Australia,5946.35 |
| Greece,8484.68 |
| Slovakia,5668.67 |
| "YesCountry,""Change in suicide death rate by age, Kazakhstan, 1995" |
| 50-69 years old,50.18 |
| 70+ years old,42.63 |
| 15-49 years old,39.89 |
| Age-standardized,30.85 |
| All ages,29.74 |
| 5-14 years old,2.5 |
| "46.78Country,""Change in suicide death rate by age, Kazakhstan, 1995" |
| 50-69 years old,50.18 |
| 70+ years old,42.63 |
| 15-49 years old,39.89 |
| Age-standardized,30.85 |
| All ages,29.74 |
| 5-14 years old,2.5 |
| "28Country,""Share of women in top income groups, UK, 2013" |
| Share of women in top 10,28 |
| Share of women in top 5,24.6 |
| Share of women in top 1%,18 |
| Share of women in top 0.5%,15.6 |
| Share of women in top 0.25,13.3 |
| Share of women in top 0.1%,10.8 |
| "NoCountry,""Share of women in top income groups, UK, 2013" |
| Share of women in top 10,28 |
| Share of women in top 5,24.6 |
| Share of women in top 1%,18 |
| Share of women in top 0.5,15.6 |
| Share of women in top 0.25,13.3 |
| Share of women in top 0.1,10.8 |
| "BrazilCountry,""Cattle meat per animal, 1961" |
| United States,214.9 |
| Argentina,210.0 |
| Brazil,191.7 |
| China,96.6 |
| "NoCountry,""Cattle meat per animal, 1961" |
| United States,214.9 |
| Argentina,210.0 |
| Brazil,191.7 |
| China,96.6 |
| "MathsCountry,""Male-to-Female Ratio of High School Courses in Math and Science, UnitedStates, 1982" |
| Chemistry,1.1 |
| Science,1.08 |
| Maths,1.06 |
| "YesCountry,""Male-to-Female Ratio of High School Courses in Math and Science, UnitedStates, 1982" |
| Chemistry,1.1 |
| Science,1.08 |
| Maths,1.06 |
| "ZambiaCountry,""Share of global forest area, 2012" |
| Venezuela,1.15 |
| Zambia,1.13 |
| Guatemala,0.09 |
| Sierra Leone,0.07 |
| Saint Vincent and the Grenadines,0.01 |
| "0.02Country,""Share of global forest area, 2012" |
| Venezuela,1.15 |
| Zambia,1.13 |
| Guatemala,0.09 |
| Sierra Leone,0.07 |
| Saint Vincent and the Grenadines,0.01 |
| "GreenCountry,""Average usual weekly hours worked, women 15 years and older, 2010" |
| Poland,38.15 |
| Luxembourg,32.8 |
| Denmark,31.16 |
| Ireland,30.68 |
| |
| Poland,38.15,38.15,0 |
| Luxembourg,32.8,32.8,0 |
| Denmark,31.16,31.16,0 |
| Ireland,30.68,30.68,0 |
| "PurpleCountry,""People practicing open defecation in urban areas (%, of urban population),2000" |
| Eritrea,40.7 |
| Other small states,3.73 |
| Uganda,1.92 |
| Armenia,0.14 |
| "YesCountry,""People practicing open defecation in urban areas (Percentage of urban population),2000" |
| Eritrea,40.7 |
| Other small states,3.73 |
| Uganda,1.92 |
| Armenia,0.14 |
| "0.85Country,""Average weekly leisure estimates by age, United States, 1970" |
| Ages 65+ (total),59.5 |
| Ages 14-17 (total),53.9 |
| Ages 14+ (total),41.7 |
| Ages 55-64 (total),41.3 |
| Ages 18-24 (total),39.9 |
| Ages 25-34 (total),34.8 |
| "NoCountry,""Average weekly leisure estimates by age, United States, 1970" |
| Ages 65+ (total),59.5 |
| Ages 14-17 (total),53.9 |
| Ages 14+,41.7 |
| Ages 55-64 (total),41.3 |
| Ages 18-24 (total),39.9 |
| Ages 25-64 (total),34.8 |
| "8.87Country,""Share of the population living in urban areas, 1950" |
| Palestine,37.3 |
| El Salvador,36.51 |
| Reunion,23.49 |
| South Sudan,8.87 |
| "28.41Country,""Share of the population living in urban areas, 1950" |
| Palestine,37.3 |
| El Salvador,36.51 |
| Reunion,23.49 |
| South Sudan,8.87 |
| "7.54Country,""Expenditures on general government outsourcing ( %GDP)" |
| Germany,13.4 |
| Norway,9.41 |
| Turkey,7.54 |
| Greece,7.11 |
| "1.88076Country,""Expenditures on general government outsourcing (GDP)" |
| Germany,13.4 |
| Norway,9.41 |
| Turkey,7.54 |
| Greece,7.11 |
| |
| Myanmar,69.09,,26.95,,,65.72 |
| Zambia,28.50,,26.74,,,29.34 |
| Eastern Sub-Saharan Africa,13.54,,,19.16,,,30.16 |
| New Zealand,11.21,12.10,,13.02,,,23.86 |
| |
| Myanmar,,,,,,,, |
| Zambia,28.2,27.8,26.9,28.0,28.1,28.2,28.3,27.4 |
| Eastern Sub-Saharan Africa,21.7,21.4,21.1,21.0,19.9,19.3,18.8,18.4 |
| New Zealand,11.0,11.1,11.2,11.5,11.8,12.2,12.5,12.8 |
| |
| Females (45 to 64),20.8,21.6,20.0,18.3,19.1,21.1,26.5","[2014, 2016] |
| |
| Females (45 to 64),20.3,20.7,22.2,19.5,19.2,21.6,26.8 |
| |
| Spain,1.63,1.65,1.67,1.6,1.69 |
| Bahrain,1.2,1.2,1.2,1.5,1.5 |
| Georgia,1.25,1.3,1.25,1.2,1.3 |
| |
| Spain,1.676864945,1.747259706,1.700527722,1.963963289,2.012692784 |
| Bahrain,1.324742067,1.215051842,1.223212171,1.700405798,1.662726219 |
| Georgia,1.610402625,1.469078111,1.518400321,1.484978394,1.438642804 |
| |
| Belize,67.09,66.09,68.84,58.67,57.77,59.26,66.03,68.21 |
| Papua New Guinea,51.26,50.19,44.28,40.34,42.63,45.69,48.52,48.54 |
| |
| Papua New Guinea,45.0,,,,,,54.0 |
| Belize,67.0,,,,,,67.0 |
| |
| Albania,38.011979,52.708364,65.272820,66.356922,85.929022 |
| Benin,74.163200,22.845710,87.604073,81.442261,84.27303 |
| Sudan,51.128740,45.789366,42.839363,55.021583,67.064623 |
| |
| Albania,85.0,,86.6,,86.5 |
| Benin,82.3,,83.7,,85.5 |
| Sudan,55.0,,57.1,,62.2 |
| |
| 2017,31.0 |
| 2015,29.0 |
| 2010,35.0 |
| 2005,43.0 |
| 2000,54.0 |
| 1995,53.0 |
| 1991,47.0 |
| |
| Mongolia,51.01,46.52,48.84,42.28,33.56,27.98,28.13 |
| |
| Eritrea,4.569182764,4.153084922,4.014895043,3.834441299,3.746285474,3.757640234 |
| North America,4.634359595,4.221533933,2.929000515,2.869236143,2.78045922,2.80534263 |
| |
| Eritrea,4.556,4.461,4.422,4.362,4.284,4.226 |
| North America,4.931,4.833,4.788,4.741,4.653,4.587 |
| |
| North Korea,0,0,0,0,0,0,0,0 |
| |
| North Korea,0,0,0,0,0,0,0,0 |
| |
| Hong Kong,1.811084,2.130848,2.539547,3.145352,3.190756 |
| Serbia,1.731459,1.971101,2.232378,2.761663,2.990837 |
| |
| Hong Kong,2.0,2.413,2.791,3.247,3.32 |
| Serbia,1.937,2.149,2.454,3.041,3.2","[2003, 2004] |
| |
| South Eastern Asia,4.93,5.95,8.79,11.92,14.84,14.27 |
| Honduras,0.02,0.02,0.02,0.02,0.02,0.02 |
| Cameroon,0.02,0.02,0.02,0.02,0.02,0.02 |
| Costa Rica,0.02,0.02,0.02,0.02,0.02,0.02 |
| Solomon Islands,0.02,0.02,0.02,0.02,0.02,0.02 |
| "redCountry,""Land use for palm oil production" |
| South Eastern Asia,14.6 |
| Honduras,3.2 |
| Cameroon,5.5 |
| Costa Rica,2.2 |
| Solomon Islands,1.8 |
| |
| Estonia,48113.04049,43173.6664,41660.18,40530.437,42934.2957,45820.11,51876.211,53708.615 |
| Lebanon,44699.4816,41276.0614,40067.9216,39460.198,37360.0204,42040.5657,48846.360,47523.955 |
| Costa Rica,24809.9426,28422.1063,27527.282,28 |
| |
| Estonia,46058.1,43325.8,43158.9,45530.4,51230.9,56018.6,55991.9,57024.6 |
| Lebanon,44970.6,39761.2,42641.6,44039.8,41822.1,47337.7,51572.2,49259.8 |
| Costa Rica,25859.5,28264.2,28016.5,28183.4,28841.2,29206.6,30050.5,32246.6 |
| Nepal,-,5785.6,3 |
| |
| ""China - Death Rate"",6.37,,,,,6.5,,,,,4.03 |
| ""China - Birth Rate"",37.25,,,,,31.6,,,,,22.51 |
| |
| Birth Rate,37.0,34.0,33.0,32.0,30.0,27.0,26.0 |
| Death Rate,18.0,13.0,14.0,11.0,6.0,4.0,4.0 |
| |
| Gender gap in managerial jobs,10.2,,,, |
| Gender gap in ""male"" professional jobs,,8.4,,,, |
| Gender gap in collective-bargaining coverage,,,,0.0 |
| |
| Gender gap in managerial jobs,10.19,8.7,5.7,4.2,3.2 |
| Gender gap in """"male"" professional jobs,6.41,5.08,4.17,2.55,1.5 |
| Gender gap in collective-bargaining coverage,3.66,6.61,4.04,2.84,2.0 |
| |
| Australia,0.0,0.0,0.0,1.0,1.8,2.3 |
| Canada,0.0,0.0,0.0,0.1,0.0,0.4 |
| |
| Australia,0.052849967,0.097094096,0.170336309,0.286118425,0.408124408,0.546283332 |
| Canada,0.029725694,0.065281011,0.083755081,0.107144596,0.208418191,0.299057044 |
| |
| Moldova,8.99,8.99,8.99,8.99,8.99,8.99 |
| Tanzania,5.68,5.68,5.68,5.68,5.68,5.68 |
| Suriname,5.89,5.89,5.89,5.89,5.89,5.89 |
| Madagascar,3.51,3.51,3.51,3.51,3.51,3.51 |
| |
| Moldova,9.0,9.0,9.0,9.0,9.0,9.0 |
| Tanzania,7.0,7.0,7.0,7.0,7.0,7.0 |
| Suriname,6.0,6.0,6.0,6.0,6.0,6.0 |
| Madagascar,5.0,5.0,5.0,5.0,5.0,5.0 |
| |
| Germany,57.4,,,,,,67.8 |
| Dominican Republic,38.2,,,39.0,,,39.0 |
| Bolivia,63.5,,,58.7,,,60.5","[2013, 2016] |
| |
| Germany,56.4,66.5,66.8,68.5,67.2,67.4 |
| Bolivia,63.1,69.3,69.1,66.2,60.9,63.7 |
| Dominican Republic,64.1,39.0,46.9,46.6,44.1,43.1","[Germany, Bolivia, Dominican Republic] |
| |
| Philippines,9.67,10.0,8.67,9.73,9.93 |
| Nepal,11.91,11.26,13.02,11.27,9.14 |
| |
| Philippines,9.15938,9.96239,8.80565,9.59467,9.72054 |
| Nepal,,,12.4518,9.95309,9.12411 |
| |
| Guinea,4.995999999999998,3.765999999999994,3.244300000000001,2.594100000000003,1.984099999999876,1.067100000000176,0.9619999999994414,1.012599999996629,1.014399999993735 |
| |
| Guinea,5.0,0.0,3.0,2.8,2.0,1.0,1.0,1.0,1.0 |
| |
| United States,73.1,73.1,73.1,78.2,80.9,65.9,58.7,56.0,55.5 |
| |
| ""United States"",77.159,77.8022,80.8351,82.2639,84.8308,66.9744,56.7544,57.6026,59.2145 |
| |
| Benin,0.0056,0.0348,0.0449,0.0447,0.0889,0.0873 |
| |
| Benin,0.00903982814,0.0311490249,0.0443913837,0.0478587298,0.0868570427,0.0879773342 |
| |
| Botswana,568500.0,649600.0,,1257700.0,,1699600.0 |
| Nigeria,,,,,,1150800.0 |
| Honduras,42000.0,,586600.0,586600.0,,731500.0 |
| American Samoa,1000.0,,1000.0,,1000.0,,,0 |
| |
| Botswana,519615.4284367684,556947.512311833,666104.3685218517,1188215.4909264968,1293462.02817676,1429272.568867658,1465307.329090641 |
| Nigeria,395226.1822963893,382851.2325992655,466520.0840023186,1177930.690959485,1202653.15699968 |
| |
| Burundi,1.0022817646,1.056494812,1.231315766,1.369725431,1.442679293,1.535100802,1.635814405,1.768619952 |
| Russia,0.405036678,0.42676718,0.442870487,0.471842473,0.513720662,0.56865934,0.629710194,0.655889132 |
| |
| Burundi,1.08521,1.16173,1.23645,1.28367,1.29959,1.32394,1.36432,1.40551 |
| Russia,0.40473,0.40669,0.42418,0.53205,0.56249,0.56711,0.54965,0.47783 |
| |
| United Kingdom,1898.389196,1681.555307,1780.230644,1717.149166,1648.65211,1568.38691,1541.045492,1213.570441 |
| |
| United Kingdom,1947.6879974,1914.3421292,1863.1424341,1768.1850758,1641.6679693,1471.9551194,1549.7285336,1348.1960457 |
| Cape Verde,2118.576052,1650.2504437,1702.8110653,1654.2813632,1615.9682259,1503.8571952,1514.673866,1733.536","[United Kingdom, Cape Verde] |
| |
| Gabon,5,0,0,0,0,16,0,0,1 |
| Sao Tome and Principe Dominica,0,0,0,0,0,0,0,0,0 |
| |
| Gabon,3.02,2.36,5.38,5.44,2.84,16.54,6.3,4.13,1.95 |
| Sao Tome and Principe,0.08,0.34,0.44,0.52,0.37,0.28,0.55,0.44,0.44 |
| Dominica,0.00,0.00,0.00,0.00,0.00,0.00,0.00,0.00,0.00 |
| |
| Jamaica,40.0,,55,,52,,57 |
| Euro area,25.0,,28,,32,,29 |
| |
| Jamaica,41.6115997091484,59.4945093598389,58.1423884298926,47.9680301120449,46.3395205038817,54.1539589566741,56.9849622773883,48.9180467121314 |
| Euro area,26.1692929816374,25.4399424548258,26.2345696426706,26.0240298437698,2 |
| |
| Netherlands,20861.34,21871.11,22692.3,23780.96,23956.12,23661.3,24109.19,25672.88,26980.59,26684.42 |
| Poland,8610.16,8409.52,8205.64,8004.58,7978.01,8053.2,8594.31,9575.1,10893.5,11827.37 |
| |
| Netherlands,21675,21147,22344,23567,23709,23134,22753,26779,26924,26250 |
| Poland,8757,8887,9177,9268,9058,9209,9882,10363,11435,12066 |
| |
| Nepal,46.1,47.32,69.31,56.08,32.59,80.81,45.36,26.47,15.48 |
| Haiti,105.69,92.07,80.24,56.22,40.71,35.8,47.66,16.26,9.7 |
| Belize,0.0,0.0,0.0,0.0,0.0,0.0,0.0,0.0,0.0 |
| |
| Nepal,110.1,83.1,56.7,65.1,42.5,60.8,48.2,16.7,17.5 |
| Haiti,102.1,88.0,68.4,54.7,43.7,48.6,47.9,19.5,18.0 |
| Belize,15.8,4.1,8.6,5.5,3.4,2.7,0.7,0.4,0.0 |
| |
| Asia,14.0,20.0,22.0,22.0,22.0 |
| |
| Asia,14.87868070833333,20.65714285714286,22.86458333333333,24.51606055555556,23.44694444444444","[1965, 1970] |
| |
| Eritrea,799317.3734013621,825105.7842976885,844988.2239052758,865495.1596487738,875991.1764173348,884698.2838240882,894419.5513142572 |
| Fiji,819889.4310099611,821909.2784712341,823993.0777650953,825980.1312568043,827976.356 |
| |
| United States Virgin Islands,166034.9,167712.8,170090.4,174498.9,178960.0,182764.0,186625.9 |
| Fiji,775843.3,828648.4,882806.1,909549.6,919700.8,891359.5,880169.2 |
| Eritrea,849529.8,892212.6,938069.7,949145.1,976777.0,982022.0,997384.8 |
| |
| ,273.89,276.05,280.13,280.49,281.93,284.38,286.86,289.89 |
| |
| Nitrous oxide (N2O) atmospheric concentration,276.216,276.697,277.527,278.428,279.281,280.25,281.434,283.429 |
| |
| Israel,100.0,100.0,100.0,,100.0,100.0 |
| Angola,36.0,36.0,36.0,38.0,38.0,38.0,38.0 |
| China,48.0,52.0,54.0,54.0,54.0,54.0,57.0 |
| South Sudan,100.0,100.0,100.0,100.0,100.0,100.0,100.0 |
| |
| Angola,38.6,44.9,46.2,47.1,48.0,48.7,49.4 |
| China,50.4,56.1,62.0,66.9,64.2,68.9,69.5 |
| Israel,100.0,100.0,100.0,100.0,100.0,100.0,100.0 |
| South Sudan,10.0,10.0,10.0,10.0,10.0,10.0,10.0 |
| |
| Jamaica,73.15,73.54,78.13,82.32,87.51,87.89,88.33 |
| Eritrea,22.11,22.58,24.19,26.92,33.00,32.49,32.93 |
| South Sudan,54.51,59.22,61.23,71.3,80.21,80.92,81.6 |
| |
| Jamaica,74.58008,75.41434,76.84127,80.89005,83.93013,86.87027 |
| Eritrea,23.307221,25.61863,27.12062,27.56976,28.55563,30.61934 |
| South Sudan,50.14721,53.49451,55.97601,58.11154,59.5735,62.7684 |
| |
| 70+ years old,61.18333333,60.82333333,60.12666667,60.24666667,36.67666667,35.64666667,37.74666667 |
| 50-69 years old,36.48333333,36.79166667,36.93333333,36.35833333,35.90833333,34.33333333,35.69166667 |
| Age-standardized,11.73333333,11.87833333,12. |
| |
| 70+ years old,66.0,66.0,65.0,63.0,62.0,62.0,61.0 |
| 50-69 years old,38.0,39.0,39.0,39.0,38.0,38.0,38.0 |
| Age-standardized,14.0,14.0,14.0,13.0,12.0,12.0,11.0 |
| 15-49 years old,25.0,25.0,25.0,23.0,21.0,19.0,15.0 |
| All Ages,16.0,16.0,16.0,15.0,14.0,12.0,10.0 |
| 15-4 years old,14.0,1 |
| |
| Botswana,182.02678,155.37548,112.89817,130.87039,146.47627,132.78468 |
| Chile,363.19232,295.3076,276.5111,144.8342,161.96845,112.23984 |
| Comoros,21.09145,0.001872184,0.001872184,0.001872184,18.28707,22.77524 |
| |
| Comoros,0.0,,,,,122.0 |
| Botswana,168.0,158.0,,150.0,,,149.0 |
| Chile,276.0,271.0,257.0,177.0,149.0,,148.0 |
| Comoros,0.0,,,,,122.0 |
| |
| Cape Verde,0.6298489514430625,0.9401747991480294,0.5949511889021826,0.9334869188531164,1.0101313283215745,0.8945640441461667,0.9970465147871388 |
| Latvia,100.0,100.0,100.0,100.0,100.0,100.0,100.0 |
| Tajikistan,0.03409695325371094,0.0953594980 |
| |
| Cape Verde,0,100,50,100,100,89,100 |
| Latvia,0,100,50,100,100,89,100 |
| Tajikistan,30,42,55,62,86,93,96 |
| |
| Switzerland,28.882,28.658,28.274,27.897,27.809,27.675,27.541,27.522 |
| Romania,36.097,35.942,35.78,36.006,36.667,36.85,37.242,37.21 |
| Portugal,39.5,39.3,38.9,38.0,38.1,38.0,38.7,38.7 |
| |
| Romania,40.5518551139882,39.9095779767206,37.77738478460804,38.58937420650842,37.60028962849976,38.60740466814719,39.57628639771854,37.50998692706764 |
| Portugal,46.23345884141336,44.12111220376808,40.26392099207621,37.3022672410 |
| |
| Child (before age 5),2.0,1.22,1.0125,0.9525,0.7875 |
| Infant (first year of life),1.829187,1.315562,1.036671,0.944402,0.726454 |
| Neonatal (first 28 days of life),1.436152,1.01323,0.575964,0.402581,0.286308 |
| |
| ""Child (before age 5)"",1.92,1.73,,,,, |
| ""Infant (first year of life)"",1.98,1.65,,,,, |
| Neonatal (first 28 days of life),.24,1.44,,,,, |
| |
| Fiji,0.2,0.2,0.22,0.33,0.85,0.89 |
| |
| Fiji,0.192,0.23,0.221,0.415,0.562,0.88 |
| |
| Ireland,7.4,8.4,10.6,12.2,13.2,13.6,13.1 |
| Bulga ria,4.0,4.0,4.0,4.0,4.0,5.0,5.0 |
| |
| Ireland,7.294404285714286,,12.056808868451225,12.36198184566397,13.11968183012642,13.70521965211446 |
| Bulgaria,,,,4.368421052631572 |
| Romania,,,,2.791108701203464 |
| |
| Bangladesh,662.0,676.0,690.0,695.0,705.0,720.0,730.0,745.0 |
| Ukraine,284.0,290.0,295.0,297.0,297.0,298.0,299.0,300.0 |
| Togo,234.0,237.0,240.0,243.0,245.0,247.0,249.0,250.0 |
| Belize,119.0,122.0,123.0,124.0,124.0,125.0,126.0,126.0 |
| |
| Bangladesh,674.3510789,661.6707061,649.3884221,637.4096661,624.3505027,611.7392666,600.5902388,683.451086 |
| Ukraine,288.4193071,288.4193071,288.4193071,288.4193071,288.4193071,288.4193071,288.4193071,288.4193071 |
| Togo,223.2718028,223 |
| |
| Mali,4,4,3,5,2,6 |
| Mongolia,1,0,0,1,1,2 |
| Ecuador,0,0,0,0,0,1 |
| |
| Mali,3.1,,20.8,,6.2 |
| Mongolia,0.2,,0.7,,0.9 |
| Ecuador,0.1,,0.2,,1.2 |
| |
| Iran,3.8,4.7,10.4,8.9,10.4 |
| Taiwan,3.1,5.4,9.5,10.1,9.5 |
| Morocco,1.2,2.1,2.4,3.0,2.9 |
| |
| Iran,3.72,4.8,9.81,9.3,10.06 |
| Taiwan,2.94,3.7,6.94,9.77,10.25 |
| Morocco,1.33,1.9,2.9,3.01,3.01 |
| |
| Upper secondary,89.0,88.0,87.0,86.0,89.0 |
| Lower secondary,65.0,64.0,63.0,64.0,64.0 |
| Primary school,45.0,45.0,45.0,45.0,47.0 |
| |
| Primary school,50.2,,,,,53.3 |
| Lower secondary,64.9,,,,,66.2 |
| Upper secondary,86.9,,,,,88.9 |
| |
| Switzerland,5.39,,,5.36,,,4.62 |
| |
| Switzerland,5.649,5.552,5.702,5.58,5.454,4.977,5.104,4.867 |
| |
| Belgium,13.3224561,12.6654467,4.4698441,11.2489538,10.4467391,5.5855648,5.9426499,11.9617239,10.9873111,11.485299,12.2939476,12.0809718,11.0944906,11.071485,10.2398906 |
| Libya,3.7776067,0.8 |
| |
| Belgium,12.76,12.04,13.8,10.07,10.53,10.62,11.74,10.94,11.6,11.5,11.24,11.55,11.21,10.88,10.87 |
| Libya,5.2,5.81,4.65,5.58,5.74,4.78,6.65,6.63,6.09,6.86,6.27,6.69,7.07,6.74,6.85 |
| Uzbekistan,3.9,3.9, |
| |
| China,17,31,50 |
| U.S,29,41,29 |
| |
| China,,31,50 |
| U.S.,29,41,29 |
| |
| The coronavirus outbreak,46,42.0,10, |
| The 2020 presidential candidates,19,33,31,16 |
| |
| The coronavirus outbreak,46,42,10,0 |
| The 2020 presidential candidates,19,33,31,16 |
| |
| Dem/Lean Dem,69,29 |
| Rep/Lean Rep,91,8 |
| U.S adults,79,20 |
| |
| Dem/Lean Dem,69,29 |
| Rep/Lean Rep,91,8 |
| U.S adults,79,20 |
| |
| U.S.,23,73 |
| IR scholars,24,76 |
| |
| U.S.,23,73 |
| IR scholars,24,76 |
| |
| U.S.,84.0,15 |
| China,60.0,37 |
| EU,39.0,57 |
| who,34.0,64 |
| Our country,25.0,74 |
| |
| U.S,84.0,15 |
| China,60.0,0 |
| EU,39.0,57 |
| who,34.0,0 |
| Our country,25.0,74 |
| |
| ""Large numbers of moving people country to another from one"",40,40,18 |
| between groups ethnic or countries,48,41,0 |
| ""Long-standing conflict"",48,41,0 |
| Global poverty,53,35,0 |
| The condition of the global economy,58,35,0 |
| weapons,61,31,0 |
| ""The spread of nuclear"",61,31,0 |
| ""Cyberattacks from other countries"",65,30,0 |
| Terrorism,66,30,0 |
| ""The spread of infectious diseases"",69,28,0 |
| Global climate change,70,24,5 |
| |
| ""Large numbers of people moving from one country to another"",40,40,18.0 |
| between countries or ethnic groups,48,41, |
| Long-standing conflict,48,41,0.0 |
| Global poverty,53,35,0.0 |
| The condition of the global economy,58,35,0.0 |
| weapons,61,31,0.0 |
| The spread of nuclear,61,31,0.0 |
| Cyberattacks from other countries,65,30,0.0 |
| Terrorism,66,30,0.0 |
| infectious diseases,69,28,0.0 |
| The spread of infectious diseases,69,28,0.0 |
| Global climate change,70,24,5.0 |
| |
| Dem/Lean Dem,20,79 |
| Rep/ Lean Rep,57,41 |
| Total,37,62 |
| |
| Dem/Lean Dem,20,79 |
| Rep/Lean Rep,57,0 |
| Total,37,62 |
| |
| national parks,54.0,40,0 |
| Protect open lands in,54.0,40,0 |
| habitats,62.0,32,0 |
| Protect animals and their,62.0,32,0 |
| change,65.0,25,0 |
| Reduce effects of climate,65.0,25,0 |
| rivers and streams,67.0,29,0 |
| |
| national parks,54,40,5 |
| habitats,62,32,6 |
| change,65,25,9 |
| Reduce effects of climate,65,25,0 |
| Protect animals and their,62,32,6 |
| national parks,54,40,5 |
| |
| Donald Trump,63,48,15.0,21.0,15 |
| Your state elected officials,44.0,18.0,26.0,39.0,56 |
| Your local elected officials,39.0,12.0,27.0,,0 |
| as those at the CDC,36.0,,11.0,,0 |
| Public health officials such,36.0,,11.0,25.0,,0 |
| centers in your area,12.0,9.0,,45.0,,88 |
| Hospitals and medical,12.0,,12.0,,0,0 |
| |
| Donald Trump,63,48,15,21,15 |
| Your state elected officials,,26,39,16,56 |
| Your local elected officials,39,12,27,47,13 |
| as those at the CDC,36,11,25,47,16 |
| Public health officials such,36,11,25,47,16 |
| centers in your area,NET,12,9,45,43,88 |
| Hospitals and medical,36,,12,9,45,43 |
| ""Majority of Americans are critical of Trump's response to COVID-19; nearly half say he is doing 'poor' job"","""","""","""","""",""""",No |
| "63Entity,U.S.,Both (VOL),Russia |
| East,23,36,38 |
| West,43,29,21",29 |
| "YesEntity,U.S.,Both (VOL),Russia |
| East,23,36,38 |
| West,43,29,21",No |
| "68Entity,Very well,Fairly well,NET |
| Lean Re publican,36,,77 |
| Republican,,32,93 |
| Mod/Lib,32,,75 |
| Conserv,63,31,94 |
| HS or less,56,33,89 |
| Some colle ge,51,36,87 |
| College grad,45,40,85 |
| Postgrad,42,38,80 |
| 65+,68,26,94 |
| 50-64,58,33,92 |
| 30-49,,42,82 |
| Ages 18-29,31,45,76 |
| All Rep/Lean Rep,,36,87",68 |
| "2Entity,Very well,Fairly well,NET |
| Lean Republican,36,41,77 |
| Republican,61,32,93 |
| Mod/Lib,32,44,75 |
| Conserv,63,31,94 |
| Postgrad College grad Some college HS or less,56,36,8785 |
| 65+,68,26,94 |
| 50-64,58,33,92 |
| 30-49,41,42,82 |
| Ages 18-29,31,45,76 |
| All Rep/Lean Rep,51,36,87",2 |
| "182Entity,Very strong,Strong,Not very strong,No conflicts |
| People in cities & people in rural areas,15.0,25.0,35,20.0 |
| Young & & People in cities & older people,14.0,27.0,41,16.0 |
| Black & white people,19.0,34.0,34,10.0 |
| Rich & poor people,31.0,28.0,, |
| Democrats & Republicans,71.0,20.0,5,0.0",71 |
| "25Entity,Very strong,Strong,Not very strong,No conflicts |
| People in cities & people in rural areas,15,25,35,20 |
| Young & older people,14,27,,16 |
| Black & white people,19,34,34,10 |
| Rich & poor people,31,28,,11 |
| Democrats & Republicans,71,20,5,0",24 |
| "20Entity,All,Most,Only some,None |
| 65+,34,56,,,, |
| 50-64 5,29,59,7,,,, |
| 30-49,24,57,15,,,, |
| Ages 18-29 2,20,54,23,,,,",20 |
| "56Entity,All,Most,Only some,None |
| 65+,34,56,0.0,0 |
| 50-64,29,59,0.0,0 |
| 30-49,24,57,0.0,15 |
| Ages 18-29,20,54,23.0,0",44 |
| "Generally produces accurate conclusionsEntity,Can be used to produce any conclusion the researcher wants,Generally produces accurate conclusions |
| Dem/lean Dem,29,70 |
| Rep/lean Rep,44,55",Generally produces accurate conclusions |
| "0.238095238Entity,Can be used to produce any conclusion the researcher wants,Generally produces accurate conclusions |
| Dem/lean Dem,29,70 |
| Rep/lean Rep,44,55",0.414285714 |
| "LiberalEntity,Will focus too much,Will not focus enough |
| Liberal,46,52 |
| Cons/Mod,55,43 |
| Dem /Lean Dem,51,0",46 |
| "YesEntity,Will focus too much,Will not focus enough |
| Liberal,46,52 |
| Cons,55,43 |
| Dem/Lean Dem,51,47",No |
| "Ages 18-29Entity,U.S. efforts usually make world problems worse,Problems in without would be worse U.S. |
| Liberal,40.0,54 |
| Cons/Mod,35.0,59 |
| Dem/Lean Dem,,,56 |
| Mod/Lib,24.0,71 |
| Rep/Lean Rep,19.0,76 |
| 65+,23.0,68 |
| 50-64,21.0,73 |
| 30-49,34.0,61 |
| Ages 18-29,43.0,50 |
| Total,29.0,64",Ages 18-29 |
| "YesEntity,U.S. efforts usually make world problems worse,Problems in without would be worse U.S. |
| Liberal,40,54 |
| Cons/Mod,35,59 |
| Dem/Lean Dem,37,56 |
| Mod/Lib,24,71 |
| Conserv,16,79 |
| Rep/Lean Rep,19,76 |
| 65+,23,68 |
| 50-64,21,73 |
| 30-49,34,61 |
| Ages 18-29,43,50 |
| Total,29,64",Yes |
| "BlueEntity,a lot,Some,Not too much,Not at all |
| Elected officials,26.0,38,30,0 |
| The news media,34.0,33,23,0 |
| People from holistic or alternative health groups,35.0,33,21,0 |
| ""Pharmaceutical industry leaders"",13.0,36,30,20 |
| Medical scientists,55.0,35,5,0",Dark blue |
| "56Entity,a lot,Some,Not too much,Not atall |
| Elected officials,26,38,30,0 |
| The news media,8,34,33,23 |
| or alternative health groups,9,35,33,21 |
| People from holistic,9,35,33,21 |
| ""Pharmaceutical leaders"",13,36,30,20 |
| Medical scientists,55,35,,0",56 |
| "37Entity,Values |
| MEDIAN,34.0 |
| India, |
| Kenya,14.0 |
| Philippines,20.0 |
| Vietnam,30.0 |
| South Africa,30.0 |
| Mexico,34.0 |
| Tunisia,37.0 |
| Jordan,37.0 |
| Colombia,40.0 |
| Venezuela, |
| Lebanon,57.0",37 |
| "3Entity,Values |
| median,34 |
| India,11 |
| Kenya,14",3 |
| "18Entity,Very concerned,Somewhat concerned,Not concerned |
| communicating face-to-to,48,26,22 |
| Losing the ability to,48,26,22 |
| Harassment or bullying,59,21,16 |
| Mobile phone addiction,62,17,18 |
| ""incorrect information"",64,25,14 |
| Exposure to false or,64,25,14 |
| thief,66,17,16 |
| Identity theft,66,17,16 |
| to harmful content,79,14,6 |
| Children being exposed to,79,14,6",18 |
| "NoEntity,Very concerned,Somewhat concerned,Not concerned |
| Losing the ability to communicate face-to-face,,22,0 |
| Harassment or bullying,59.0,21,16 |
| Mobile phone addiction,62.0,,18 |
| Exposure to false or incorrect information,64.0,25,14 |
| Identity theft,66.0,,16 |
| Children being exposed to harmful content,79.0,14,,0",Yes |
| "53Entity,Not at all,Not too,Somewhat,Very |
| Work effectively with Congress 62,42,15.0,35,0 |
| Make wise decisions immigration policy,58,45.0,29,0 |
| Manage the executive branch effectively,56,41.0,23,0 |
| Handle an international crisis,54,40.0,26,0 |
| Use military force wisely,53,39.0,26,0 |
| Make good appointments to the federal courts,51,39.0,29,0 |
| about economic policy,49,32.0,32,0 |
| Make good decisions about economic policy,49,32.0,32,0 |
| with other countries,47,32.0,31,0 |
| Negotiate favorable trade agreements with other countries,47,32.0,31,51",45 |
| "2Entity,Not at all,Not too,Somewhat,Very |
| with Congress 62,42.0,15,35,0 |
| Work effectively with Congress 62,42.0,15,35,0 |
| about immigration policy,58.0,45,29,40 |
| Make wise decisions about immigration policy,58.0,45,29,40 |
| Manage the executive branch effectively,56.0,41,23,41 |
| Handle an international crisis,54.0,40,26,44 |
| Use military force wisely,53.0,39,26,44 |
| Make good appointments to the federal courts,51.0,39,29,45 |
| about economic policy,49.0,32,32,49 |
| Make good decisions,49.0,32,32,49 |
| with other countries,47.0,32,31,51 |
| Negotiate favorable trade agreements,47.0,32,31,51",1 |
| "52Entity,Confidence,No confidence,Don't know |
| Donald Trump,27,70, |
| Vadimir Putin,30,62, |
| Jinping Xi,34,56,15.0 |
| Emmanuel Macron,46,34,12.0 |
| Angela Merkel,52,31,11.0 |
| |
| Donald Trump,27,70, |
| Vadimir Putin,30,62, |
| Xi Jinping,,,15 |
| Emmanuel Macron,46,34,12.0 |
| Angela Merkel,52,31,11.0 |
| |
| Non gun owner,,84, |
| Gun owner,,64,26.0 |
| Among Rep/Lean Rep Gun owner,13.0,61,26 |
| Dem/Lean Dem,80.0,15,0.0 |
| Rep/Lean Rep,28.0,52,20 |
| All ad lults,57.0,31, |
| |
| Non gun owner,84.0,13.0,0 |
| Gun owner,64.0,26.0,0 |
| Among Dem/Lean Dem,80.0,15.0,0 |
| Non-gun owner,40.0,46.0,13 |
| Gun owner,13.0,61.0,26 |
| Among Rep/Lean Rep,28.0,52.0,0 |
| Dem /Lean Dem,80.0,15.0,0 |
| Rep/Lean Rep,28.0,52.0,0 |
| All adults,57.0,31.0,0 |
| |
| Germany,78, |
| U.S.,51, |
| |
| Germany,17,78 |
| U.S.,51,44 |
| |
| Dem/Lean Dem,16,83 |
| Rep/Lean Rep,42,57 |
| Total,28,71 |
| |
| Dem/Lean Dem,16,83 |
| Rep/Lean Rep,42,57 |
| Total,28,71 |
| |
| New treatments are so complex that patients cannot make informed decisions,42.0 |
| New treatments made available before fully understand their health effects we,44.0 |
| Health care providers are too quick to order tests/procedures,46.0 |
| Evaluation of safety/effectiveness of new medical treatments is too slow,49.0 |
| Prescription med side effects create as many problems as they solve,59.0 |
| People rely too much on prescription that med may not be necessary,68.0 |
| Cost of treatments makes quality care unaffordable,83.0 |
| |
| New treatments made available before fully understand their health effects are,44 |
| New treatmentsare so complex that decisions cannot make more informed patients,42 |
| |
| Dem/Lean Dem,25,70 |
| Rep/Lean Rep,34,61 |
| College grad Some colle ge HS for less,19,33.060 |
| Women,22, |
| Men,34,60 |
| Total,28,66 |
| |
| Dem/Lean Dem,25.0,70 |
| Rep/Lean Rep,34.0,61 |
| ""College grad+ Some colle ge HS for less"",19.0,33 |
| Women,22.0, |
| Men,34.0,60 |
| Tota 28,28.0,66 |
| |
| Young & people older,12,23,,19.0 |
| People in cities & people in rural areas,,24,,20.0 |
| Rich & poor,29,30,28.0, |
| Blacks & whites,27,38,26.0,0.0 |
| Democrats & Republicans,64,22,82.0,0.0 |
| |
| Young & older people,12,23,, |
| People in cities & people in rural areas,,20.0, |
| Rich & poor,29,30,28.0, |
| Blacks & whites,27,38,26.0, |
| Democrats & Republicans,,22.0, |
| |
| are safe to eat,14,28,53 |
| Scientists agree that GM foods,14,28,53 |
| change is due to human activity,27,35,35 |
| safe to eat,14,28,53 |
| |
| Thes,55,28,115,0,0,100 |
| ""Scientists agree that GE foods are safe to eat"",14,28,53,0,0,100 |
| ""Change is due to human activity"" Climate scientists agree,,35,0,0,0 |
| MMR vaccine is safe,55,28,15,0,0,100 |
| Medical scientists agree the,55,28,15,0,0,100 |
| ""Effects of eating GM food"",19,,35,0,0,100 |
| Scientists understand the health effects of eating GM food,19,35,0,19,0,0 |
| |
| Shared democratic values,35,21 |
| Economic and trade ties,45,33 |
| Security and defense ties,34,16 |
| |
| Shared democratic values,35,21 |
| Economic and trade ties,45,33 |
| Security and defense ties,34,16 |
| |
| Does not know a transgender person,31,29,37 |
| Knows a transgender person,52,24,23 |
| Dem/Lean Dem,,27, |
| Rep/Lean Rep,12,28,57 |
| All ad lults,39,27,32 |
| |
| Does not know a transgender person,31.0,29,37 |
| Knows a transgender person,52.0,24,23 |
| Dem/Lean Dem,60.0,, |
| Rep/Lean Rep,,28,57 |
| All ad lults,,39,32 |
| |
| India,23,37,60 |
| Mexico,30,33,63 |
| Kenya,30,38,68 |
| Indonesia,27,48,75 |
| |
| India,23,37,60 |
| Mexico,30,33,63 |
| Kenya,30,38,68 |
| Indonesia,27,48,75 |
| |
| Re publican,27,65 |
| Independent,33,62 |
| Democrat,39,52 |
| Total,34,58","[Should not, Should] |
| |
| Re publican,27,65 |
| ndep end lent,33,62 |
| Democrat,39,52 |
| Total,34,58 |
| |
| Math is one of my favorite subjects,21,26 |
| ""Because math is fun, I wouldn't want to give it up"",13,43 |
| I like math,18,46",46 |
| "63Entity,Strongly agree,Agree |
| subjects,21,26 |
| Math is one of my favorite,21,26 |
| because math is fun,13,43 |
| I like math,18,46",72 |
| "67Entity,Taking technology too far,Appropriate use |
| Equal to their own peak abilities,50,47 |
| Much better than their own peak abilities,5,39 |
| Far above that of any human known to date,67,30",47 |
| "YesEntity,Taking technology too far,Appropriate use |
| Equal to theirpeak own abilities,50, |
| ""much better than their own peak abilities"",57,39 |
| ""Far above that of any human known to date"",67,30",Yes |
| "26Entity,Much more liberal,Same,Somewhat more conser,Much more conser |
| Democrat,,26,33,20 |
| Republican,,21,28,25",Same |
| "0.05Entity,Much more liberal. Somewhat more liberal,Same,Somewhat more conser,Much more conser. |
| Democrat,26,33,2010.0,10 |
| Republican,21,28,2519,19",16 |
| "62Entity,Reliance on principles,Ability to change |
| Silent,46,43 |
| Boo mer,49,45 |
| Generation X,,51 |
| Millennial,35,62 |
| Total,43,51",62 |
| "9Entity,Reliance on principles,Ability to change |
| Silent,46,43 |
| Boomer,49,45 |
| Generation X,,51 |
| Millennial,35,62 |
| Total,43,51",7 |
| "65+Entity,Not subject to additional scrutiny solely because of religion,Be subject to more scrutiny than people in other religious groups |
| Unaffiliated,72,24 |
| Catholic,55,38 |
| Black Prot,71,20 |
| White mainline Prot,56,36 |
| White evang Prot,43,50 |
| Democrat,76,20 |
| Indep end lent,62,31 |
| Repu blican,44,,49 |
| HS for less,58,34,0 |
| Some coll,59,33,0 |
| College grad,65,28,28 |
| Postgrad,69,28,0 |
| 65+,50,41,0 |
| 50-64,50,40,0 |
| 30-49,63,30,0 |
| 18-29,80,,0 |
| Hispa nic,66,25,0 |
| Black,74,17,36 |
| White,57,36,0 |
| Total,61,32,0",65+ |
| "15Entity,Not subject to additional scrutiny solely religion because of,subject to more scrutiny than people in other religious groups |
| Unaffiliated,72,24 |
| Catholic,55,38 |
| Black Prot,71,20 |
| White mainline Prot,56,36 |
| White evang Prot,43,50 |
| Democrat,76,20 |
| Independent,62,31 |
| Republican,44,49 |
| HS or less,58,34 |
| Some coll,59,33 |
| College grad,65,28 |
| Postgrad,69,28",6 |
| "0.37Entity,Bad,Good |
| Media,51,38 |
| Courtsystem,48,41 |
| Religious leaders,,41 |
| National gov't,48,45 |
| Police,44,46 |
| Military,37,52 |
| |
| Media,51,38 |
| Courtsystem,48,41 |
| Religious leaders,,41 |
| National gov't,48,45 |
| Police,44,46 |
| Military,37,52",39.5 |
| "47Country,Adequacy of minimum income benefits |
| Slovak Republic,19.0 |
| France,39.0 |
| Netherlands,47.0",47 |
| "38.33Country,Adequacy of minimum income benefits |
| Slovak Republic,19.0 |
| France,39.0 |
| Netherlands,47.0",35 |
| "213Country,Agricultural land |
| Luxembourg,0 |
| Korea,2 |
| Spain,25 |
| Canada,62 |
| Kazakhstan,213",213 |
| "188Country,Agricultural land |
| Luxembourg,0 |
| Korea,2 |
| Spain,25 |
| Canada,62 |
| Kazakhstan,213",151 |
| "BulgariaCountry,Benefits in unemployment,share of previous income |
| Bulgaria,15.0,- |
| Israel,25.0,- |
| Ireland,39.0,- |
| Malta,48.0,- |
| Luxembourg,57.0,-",Bulgaria |
| "IrelandCountry,Benefits in unemployment,share of previous income |
| Bulgaia,15.0 |
| Israel,25.0 |
| Ireland,39.0 |
| Malta,48.0 |
| Luxembourg,57.0",Ireland |
| "MontenegroCountry,Built-up area |
| Yemen,6 |
| El Salvador,62 |
| Montenegro,190",Montenegro |
| "13.5Country,Built-up area |
| Yemen,6 |
| El Salvador,62 |
| Montenegro,190",98 |
| "5Country,Financial disincentive to return to work |
| Australia,41.9 |
| Denmark,73.7 |
| Norway,75.2 |
| Slovenia,78.2 |
| Luxembourg,89.2",5 |
| "2Country,Financial disincentive to return to work |
| Australia,41.9 |
| Denmark,73.7 |
| Norway,75.2 |
| Slovenia,78.2 |
| Luxembourg,89.2",1 |
| "PortugalCountry,Foreign-born participation rates |
| Canada,75.6 |
| Portugal,82.7",Portugal |
| "7.1Country,Foreign-born participation rates |
| Canada,75.6 |
| Portugal,82.7",7.1 |
| "2Country,Freight transport |
| Portugal,0.0M |
| Finland,0.01M |
| Hungary,0.01M |
| India,0.26M |
| Russia,1.97M",2 |
| "YesCountry,Freight transport |
| Portugal,0.00M |
| Finland,0.01M |
| Hungary,0.01M |
| India,0.26M |
| Russia,1.97M",Yes |
| "BlueCountry,Gross pension wealth |
| Australia,5.6 |
| Estonia,6.7 |
| Croatia,6.9 |
| Luxembourg,18.7",Blue |
| "YesCountry,Gross pension wealth |
| Australia,5.6 |
| Estonia,6.7 |
| Croatia,6.9 |
| Luxembourg,18.7",Yes |
| "JapanCountry,Housing prices |
| Russia,95.6 |
| Japan,96.1",Japan |
| "1.5Country,Housing prices |
| Russia,95.6 |
| Japan,96.1",0.5 |
| "Light BlueCountry,Infant mortality rates |
| New Zealand,16.6 |
| Estonia,17.5",Blue |
| "16.98Country,Infant mortality rates |
| New Zealand,16.6 |
| Estonia,17.5",17.05 |
| "4.2Country,National area distribution |
| Slovak Republic,4.2 |
| Lithuania,15.0",4.2 |
| "7.6Country,National area distribution |
| Slovak Republic,4.2 |
| Lithuania,15.0",9.6 |
| "98Country,Nuclear power plants |
| Germany,- |
| United Kingdom,- |
| Canada,- |
| Russia,35.0 |
| Japan,0.0 |
| France,- |
| United States,98.0",98 |
| "YesCountry,Nuclear power plants |
| Germany,11.0 |
| United Kingdom,4.0 |
| Canada,20.0 |
| Russia,35.0 |
| Japan,43.0 |
| France,20.0 |
| United States,98.0",Yes |
| "United KingdomCountry,Poverty rate |
| Slovenia,0.085 |
| United Kingdom,0.119",United Kingdom |
| "0.0025Country,Poverty rate |
| Slovenia,0.085 |
| United Kingdom,0.119",0.034 |
| "RedCountry,School principals |
| Singapore,48.3 |
| Italy,57.0",Red |
| "95.3Country,School principals |
| Singapore,48.3 |
| Italy,57.0",105.3 |
| "YesCountry,Tax on goods and services |
| Korea,8.1 |
| Chile,12.1 |
| Estonia,13.0 |
| Finland,14.2 |
| Denmark,15.6",Yes |
| "YesCountry,Tax on goods and services |
| Korea,8.1 |
| Chile,12.1 |
| Estonia,13.0 |
| Finland,14.2 |
| Denmark,15.6",Yes |
| "NetherlandsCountry,Tax revenue |
| United Kingdom,36.7 |
| Netherlands,39.6",Netherlands |
| "YesCountry,Tax revenue |
| United Kingdom,36.7 |
| Netherlands,39.6",No |
| "5Country,Trade in goods and services forecast |
| Switzerland,4.8 |
| Austria,5.5 |
| Italy,8.8 |
| Latvia,16.8 |
| Iceland,21.9",5 |
| "YesCountry,Trade in goods and services forecast |
| Switzerland,4.8 |
| Austria,5.5 |
| Italy,8.8 |
| Latvia,16.8 |
| Iceland,21.9",Yes |
| "2Country,""Violence against women"" |
| Jamaica,4.9 |
| Zimbabwe,38.7",2 |
| "33.8Country,Violence against women |
| Jamaica,4.9 |
| Zimbabwe,38.7",33.8 |
| "CubaCountry,Women in politics |
| Angola,25.0 |
| Azerbaijan,25.0 |
| Ecuador,25.0 |
| Thailand,25.0 |
| Cuba,50.0",Cuba |
| "25Country,Women in politics |
| Angola,25.0 |
| Azerbaijan,25.0 |
| Ecuador,25.0 |
| Thailand,25.0 |
| Cuba,50.0",25 |
| "89Entity,Values |
| Placed a call,33.0 |
| Used an app,29.0 |
| Searched or browsed the web,25.0 |
| alert,0.34 |
| Checkto see if've received any,0.34 |
| Received an incoming caII,52.0 |
| Sent a message such as a text or email,52.0 |
| Took a photo or video,58.0 |
| Read a message such as text or email,61.0 |
| Did at least one of these activities below,89.0 |
| |
| Searched or browsed the web,25.0 |
| Used an app,29.0 |
| Placed a ca Il,33.0 |
| alerts,34.0 |
| Checked to see if you've received any, |
| Received an incoming ca Il,52.0 |
| Sent a message such as a text or email,52.0 |
| Took a photo or video,58.0 |
| Read a message such a text or email,0.0 |
| Did at least one of these activities below,89.0",64 |
| "36Entity,Values |
| The O'Reilly Factor,54 |
| The Rachel Maddow Show,53 |
| NBC Nightly News,52 |
| Anderson Cooper 360, |
| The Colbert Report,33 |
| The Daily Show,36 |
| |
| The O'Reilly Factor,54 |
| The Rachel Madden Show,53 |
| NBC Nightly News,52 |
| Anderson Cooper 360,47 |
| The Colbert Report,33 |
| The Daily Show,36",4 |
| "Right decisionEntity,Wrong decision,right decision |
| Democrat,,74.0 |
| Indep end lent,,53.0 |
| Re publican,, |
| Hispa nic,28.0,52.0 |
| Black,, |
| White,38.0,56.0 |
| Total,34.0,57.0",Right decision |
| "67Entity,Wrong decision,Right decision |
| Democrat,19,74 |
| Indep end lent,37,53 |
| Re publican,49,43 |
| Hispa nic,28,52 |
| Black,12,76 |
| White,38,56 |
| Total,34,57",64 |
| "42Entity,Disapprove,Approve |
| Independ lent,57,39 |
| Democrat,48, |
| Republican,56, |
| TOTAL,54,42",42 |
| "DemocratEntity,Disapprove,Approve |
| Indep end lent,57,39 |
| Democrat,48, |
| Republican,56,41 |
| TOTAL,54,42",Independent |
| "7Entity,Very secure,Somewhat secure,Not very secure,Not at all secure |
| Using social media sites,14,28,53,- |
| Using chat or IM,25,36,32,- |
| Sending email,35,36,21,- |
| Sending text messages,,37,22,- |
| Callin on your cell phone,43,29,17,- |
| Using landline,16,51,19,12",6 |
| "YesEntity,Very secure,Somewhat secure,Not very secure,Not at all secure |
| Using social media sites,14.0,28,53,0 |
| Using chat or IM,4.0,25,36,32 |
| Sending email,5.0,35,36,21 |
| Sending text messages,7.0,32,37,22 |
| Calling on your phone,9.0,43,29,17 |
| Using a landline,16.0,51,19,12",Yes |
| "IndonesiaCountry,""Share of marine territorial waters that are protected, 2016"" |
| Greenland,4.52 |
| Mauritania,4.15 |
| Indonesia,2.88 |
| Ireland,2.33",Indonesia |
| "0.39Country,""Share of marine territorial waters that are protected, 2016"" |
| Greenland,4.52 |
| Mauritania,4.15 |
| Indonesia,2.88 |
| Ireland,2.33",1.06 |
| "GreenCountry,""Energy intensity of transport per passenger-kilometer, 1960"" |
| International flight,1.68 |
| Domestic flight,1.57",Pink |
| "1.01Country,""Energy intensity of transport per passenger-kilometer, 1960"" |
| International flight,1.68 |
| Domestic flight,1.57",0.11 |
| "46Entity,More likely,Less Likely,Wouldn't matter |
| Independents,16,36,46 |
| Democrats,26,20,53 |
| Re publicans,15,36,46 |
| Total,19,30,48 |
| |
| Independents,16,36,46 |
| Democrats,26,20,53 |
| Re pu blicans,15,36,46 |
| Total,19,30,48 |
| "YesCountry,""Sulphur oxide (SO2) emissions, 1990" |
| Czechia,100 |
| Luxembourg,100 |
| Poland,100 |
| Turkey,100 |
| United Kingdom,100 |
| "United KingdomCountry,""Sulphur oxide (SO2) emissions, 1990" |
| Czechia,100 |
| Luxembourg,100 |
| Poland,100 |
| Turkey,100 |
| United Kingdom,100 |
| "Sri LankaCountry,""Share of women with raised blood pressure, 1996" |
| Malawi,25.99 |
| Grenada,22.81 |
| Sri Lanka,19.36 |
| "23.69Country,""Share of women with raised blood pressure, 1996" |
| Malawi,25.99 |
| Grenada,22.81 |
| Sri Lanka,19.36 |
| "East Asia and PacificCountry,""Global mismanaged plastic by region, 2010" |
| East Asia and Pacific,60.0 |
| South Asia,11.0 |
| Sub-Saharan Africa,8.9 |
| Middle East and North Africa,8.3 |
| Latin America and Caribbean,7.2 |
| Europe and Central Asia,3.6 |
| North America,0.9 |
| "11.83Country,""Global mismanaged plastic by region, 2010" |
| East Asia and Pacific,60.0 |
| South Asia,11.0 |
| Sub-Saharan Africa,8.9 |
| Middle East and North Africa,8.3 |
| Latin America and Caribbean,7.2 |
| Europe and Central Asia,3.6 |
| North America,0.9 |
| "SpainCountry,""Mean body mass index (BMI) in men, 1986" |
| Venezuela,25.11 |
| Austria,24.89 |
| Montenegro,24.4 |
| Spain,20.49 |
| "0.946208Country,""Mean body mass index (BMI) in men, 1986" |
| Venezuela,25.11 |
| Austria,24.89 |
| Montenegro,24.4 |
| Slovenia,20.49 |
| "43Country,""Share of people who say university is more important for boys" |
| Malaysia,43 |
| Philippines,38.92 |
| Ghana,27.58 |
| Switzerland,8.82 |
| "35.2Country,""Share of people who say university is more important for boys" |
| Malaysia,43.0 |
| Philippines,38.92 |
| Ghana,27.58 |
| Switzerland,8.82 |
| "SpainCountry,""Coverage by protected areas of important sites for mountain biodiversity,2000" |
| Togo,100.0 |
| Europe,50.03 |
| Spain,49.89 |
| Eswatini,29.98 |
| Colombia,25.82 |
| "NoCountry,""Coverage by protected areas of important sites for mountain biodiversity,2000" |
| Togo,100.0 |
| Europe,50.03 |
| Spain,49.89 |
| Eswatini,29.98 |
| Colombia,25.82 |
| |
| Chile,0.589203141,0.635439337,0.569170906,0.732291172,0.650499032,0.442001712,0.397630411,0.360572394,0.280956053,0.328165772,0.433983682,0.260309209 |
| Australia,1.860347961,1.719211503,1.667451936,1.9132031 |
| |
| Australia,1.858667,1.734316,1.712047,1.983917,2.012895,1.282604,1.835132,1.568814,1.586123,3.31489,2.138441,2.713451 |
| Israel,1.439914,1.983102,1.775364,0.586635,1.52774,1.130403,2.909895,3.011881,3.225028 |
| |
| Australia,40,39,32,37,38,40,44 |
| Italy,35,34,33,32,33,33,32 |
| Chile,46,40,42,40,35,32,36 |
| South Africa,14,16,16,13,11,11,17 |
| |
| Australia,40.0,4.0,36.0,3.0,38.0,42.0,42.0 |
| Italy,-,50.0,32.0,50.0,35.0,32.0,35.0 |
| Chile,-,35.0,38.0,28.0,35.0,28.0,25.0 |
| South Africa,48.0,,36.0,37.0,15.0,14.0,15.0","[Australia, Italy] |
| |
| Slovenia,68.2,,67.4,,67.2,,66.8,,66.7 |
| Turkey,47,,,,,,46.8,,48.7","[Slovenia, Turkey] |
| |
| Slovenia,67.7921432,67.63244294,66.99451594,68.55106747,68.63890845,67.15529038,67.67781666,66.83649584,65.88140432 |
| Turkey,47.28103695,44.21605394,45.50415183,46.17864949,46.49924853,44.16406959,47.31275462,48.67414 |
| |
| 1990,33.5 |
| 1995,35.3 |
| 2000,34.0 |
| 2005,33.6 |
| 2010,35.0 |
| 2015,32.0 |
| |
| Sweden,67.2,53.8,66.0,56.2,47.3,40.9,58.2 |
| United States,32.0,34.2,35.8,35.7,34.3,33.8,33.8 |
| |
| Japan,102.5,103.7,104.8,106.3,109.0,111.9,112.8,114.5 |
| Portugal,15.5,16.0,16.4,16.6,16.7,16.8,16.7,17.2 |
| Czech Republic,6.5,7.0,7.2,7.4,7.4,7.7,7.7,7.6 |
| Slovak Republic,10.0,10.0,10.0,10.0,10.0,10.0,10.0,10.0 |
| |
| Japan,100.99773,104.86225,109.8053,114.74383,119.79271,124.88069,129.91556,134.92363,139.90184 |
| Portugal,17.621699,18.417931,19.23181,20.037649,20.835654,21.692134,22.529424,23.389657,24.23294 |
| Czech Republic,10.714489,11.045091,11.4 |
| |
| Austria,107.3883441917848,,,100.3110078362342,102.8342692351563,103.4369857829125,101.2762874765201 |
| Chile,,,,70.6530091645438,72.2241565260145,77.0673555208962","[Austria, Chile] |
| |
| Austria,107.7080922896783,108.5092733187016,100.5941472538697,100.1604234545004,100.4319301764336,101.3320702884120 |
| Chile,72.6884975494815,68.6550908987344,68.64340841388,67.6314684477647,70.3325966944719,72.6568912868633 |
| |
| Lithuania,18.504,18.531,18.569,18.589,18.604,18.634,18.66,18.683,18.708,18.733,18.763","[Lithuania, Saudi Arabia] |
| |
| Saudi Arabia,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889,5.019418889 |
| Lithuania,18.847419375,18.847419375,18.847419375,18.847419375,18.8474 |
| |
| Belgium,4.0,,3.5,,3.6,,2.7 |
| New Zealand,1.9,,2.7,,2.0,,1.3 |
| |
| Belgium,3.95,3.42,3.53,3.73,3.63,3.2,2.86,3.05 |
| New Zealand,1.85,2.75,2.79,2.2,1.73,2.0,1.64,1.3 |
| |
| Korea,0.484,0.468,0.087,0.194,0.196,0.075,0.178,0.244,0.243,0.296,0.237,0.23 |
| Turkey,0.533,0.491,0.858,0.657,0.04,0.059,0.082,0.054,0.115,0.129,0.115,0.109 |
| |
| Korea,0.4961977,0.4720324,0.0898329,0.1677836,0.2269454,0.0781246,0.3380554,0.2293276,0.2779032,0.3446652,0.3314789,0.2957919 |
| Turkey,0.6783193,0.4931899,0.9149927,0.5530923,0.0672364,0.0563278,0.0881123 |
| |
| Ethiopia,86.922187,83.176959,86.218789,94.291509,90.041036,89.664673,70.002144,93.122819 |
| Congo,64.040641,75.831299,78.836188,82.823853,73.142676,67.956739,66.299291,66.763512 |
| Egypt,8.423889,9.361842,8.695761,8.661278,7.871717 |
| |
| Egypt,7.48,7.41,7.66,7.56,7.85,7.59,7.49,7.84 |
| Canada,18.76,18.92,18.86,18.91,19.1,18.33,19.2,19.7 |
| Congo,60.66,71.7,76.0,81.2,65.3,67.2,66.6,66.4 |
| Ethiopia,88.4,88.0,88.9,89.5,89.4,92.8,88.6,89.4 |
| |
| Belgium,3.6,,8.7,,10.5,11.2,9.5,,10.9,9.9,10.0,10.1 |
| Mexico,7.1,,4.6,,2.8,2.7,,4.7,,3.9,7.9,8.6 |
| |
| Belgium,3.3,5.5,8.1,10.4,10.9,11.6,9.4,10.7,10.9,10.4,6.9,9.9 |
| Mexico,3.6,3.4,4.5,5.3,4.6,2.6,3.3,4.3,4.4,3.5,7.3,8.8 |
| |
| Finland,-,1129.0,1895.0,3418.0,4730.0,4947.0,4302.0,3701.0 |
| India,-,-,-,-,-,-,-,- |
| Chinese Taiwan,-,-,-,-,-,-,-,- |
| Turkey,-,-,-,-,-,-,-,- |
| |
| Finland,120.5,,144.9,,460.7,,382 |
| India,,10,,2,,12.8,,59 |
| Chinese Taipei,5.8,,3.8,,5,,60.4,,127 |
| Turkey,,,,,,1.8,,186 |
| Iceland,,,,,,,,, |
| |
| Brazil,74.2747592880244,74.2289194835669,73.7218556786168,72.2569587892776,71.4629073251376,71.1242192780594,70.326850700988 |
| Switzerland,58.4957754761914,58.1374622328442,58.0125489125796,59.2844419065553,60.6074331655971,61.33281 |
| |
| Brazil,74.3,74.4,73.7,71.9,71.6,71.7,70.8 |
| Switzerland,58.3,57.8,58.1,59.3,59.6,60.4,60.9 |
| |
| WhatsApp*,2000 |
| Facebook Messenger*,1300 |
| Weixin / WeChat,1225 |
| QQ,595 |
| Telegram,550 |
| Snapchat*,528 |
| |
| WhatsApp*,2000 |
| Facebook Messenger*,1300 |
| Weixin / WeChat,1225 |
| QQ,595 |
| Telegram,550 |
| Snapchat*,528 |
| |
| Bridgestone (Japan),27.23 |
| Michelin (France),26.55 |
| Goodyear (U.S.),14.75 |
| Continental (Germany),12.9 |
| |
| Bridgestone (Japan),27.23 |
| Michelin (France),26.55 |
| Goodyear (U.S.),14.75 |
| Continental (Germany),12.9 |
| |
| American Airlines,19.3% |
| Southwest Airlines,17.4% |
| Delta Air Lines,15.5% |
| United Airlines,12.4% |
| Spirit,5.8% |
| Alaska Airlines,5.3% |
| JetBlue Airways,4.7% |
| ""Border Express"",3.6% |
| SkyWest,3.5% |
| ""Sendway Air"",1.3% |
| Other,11.2% |
| |
| American Airlines,19.3% |
| Southwest Airlines,17.4% |
| Delta Air Lines,15.5% |
| United Airlines,12.4% |
| Spirit,5.8% |
| Alaska Airlines,5.3% |
| JetBlue Airways,4.7% |
| ""Frontier, 3.6%"" |
| SkyWest,3.5% |
| ""Envoy Air 1.3%"" |
| Other,11.2% |
| |
| 2021*,1000.97 |
| 2020,987.75 |
| 2019,989.03 |
| 2018,996.36 |
| 2017,984.53 |
| 2016,978.77 |
| 2015,969.26 |
| 2014,1008.57 |
| 2013,1005.29 |
| 2012,1001.72 |
| |
| 2021*,1000.97 |
| 2020,987.75 |
| 2019,989.03 |
| 2018,996.36 |
| 2017,984.53 |
| 2016,978.77 |
| 2015,969.26 |
| 2014,1008.57 |
| 2013,1005.29 |
| 2012,1001.72 |
| |
| 2017,1.18 |
| 2016,1.2 |
| 2015,1.34 |
| 2014,1.39 |
| 2013,1.4 |
| 2012,1.37 |
| 2011,1.34 |
| 2010,1.37 |
| 2009,1.32 |
| 2008,1.33","[1.34, 1.37] |
| |
| 2017,1.18 |
| 2016,1.2 |
| 2015,1.34 |
| 2014,1.39 |
| 2013,1.4 |
| 2012,1.37 |
| 2011,1.34 |
| 2010,1.37 |
| 2009,1.32 |
| 2008,1.33 |
| |
| Decreased,30% |
| No impact,35% |
| Increased,35% |
| |
| Decreased,30% |
| No impact,35% |
| Increased,35% |
| |
| Dec '18,3% |
| Nov '18,3.2% |
| Oct '18,4.2% |
| Sep '18,4.7% |
| Aug '18,4.7% |
| Jul '18,4.3% |
| Jun '18,4.7% |
| May '18,4.6% |
| Apr '18,4.3% |
| Mar '18,4% |
| Feb '18,3.8% |
| Jan '18,3.4% |
| |
| Dec '18,3% |
| Nov '18,3.2% |
| Oct '18,4.2% |
| Sep '18,4.7% |
| Aug '18,4.7% |
| Jul '18,4.3% |
| Jun '18,4.7% |
| May '18,4.6% |
| Apr '18,4.3% |
| Mar '18,4% |
| Feb '18,3.8% |
| Jan '18,3.4% |
| |
| 2020,0.5% |
| 2019,1.1% |
| 2018,1.8% |
| 2017,1% |
| 2016,0.2% |
| 2015,0% |
| 2014,0.5% |
| 2013,0.9% |
| 2012,2% |
| 2011,2.1% |
| 2010,1.5% |
| 2009,0.1% |
| 2008,0.1% |
| 2007,2.8% |
| 2006,1.6% |
| 2005,1.8% |
| 2004,2.1% |
| |
| 2020,0.5% |
| 2019,1.1% |
| 2018,1.8% |
| 2017,1% |
| 2016,0.2% |
| 2015,0% |
| 2014,0.5% |
| 2013,2% |
| 2012,2.1% |
| 2011,1.5% |
| 2010,2.1% |
| 2009,1.5% |
| 2008,0.1% |
| 2007,2.8% |
| 2006,1.6% |
| 2005,1.8% |
| 2004,2.1% |
| |
| 2020,72 |
| 2019,70 |
| 2018,70 |
| 2017,71 |
| 2016,70 |
| 2015,68 |
| 2014,72 |
| 2013,72 |
| 2012,70 |
| 2011,73 |
| 2010,70 |
| 2009,70 |
| 2008,70 |
| |
| 2020,72 |
| 2019,70 |
| 2018,70 |
| 2017,71 |
| 2016,70 |
| 2015,68 |
| 2014,72 |
| 2013,72 |
| 2012,70 |
| 2011,73 |
| 2010,70 |
| 2009,70 |
| 2008,70 |
| |
| Upright vacuums,51% |
| Canister vacuums,28% |
| Robot vacuum cleaners,11% |
| ""Other (hand-held, tank-mounted, etc.)"",10% |
| |
| Upright vacuums,51% |
| Canister vacuums,28% |
| Robot vacuum cleaners,11% |
| Other (hand-held, tank-mounted, etc.),10% |
| |
| October,1390 |
| September,1300 |
| August,1260 |
| July,1240 |
| June,1220 |
| May,1270 |
| April,1290 |
| March,1210 |
| February,1220 |
| January,1210 |
| |
| October,1390 |
| September,1300 |
| August,1260 |
| July,1240 |
| June,1220 |
| May,1270 |
| April,1290 |
| March,1210 |
| February,1220 |
| January,1210 |
| |
| Only in Poland,66% |
| Only abroad,20% |
| In Poland and abroad,7% |
| Hard to say,7% |
| |
| Only in Poland,66% |
| Only abroad,20% |
| In Poland and abroad,7% |
| Hard to say,7% |
| |
| 2019/20*,509473 |
| 2018/19,519462 |
| 2017/18,522059 |
| 2016/17,537689 |
| |
| 2019/20*,509473 |
| 2018/19,519462 |
| 2017/18,522059 |
| 2016/17,537689 |
| |
| 2019,604.4 |
| 2018,575.4 |
| 2017,514.0 |
| 2016,486.9 |
| 2015,476.9 |
| 2014,482.5 |
| 2013,453.6 |
| 2012,402.3 |
| 2011,349.2 |
| 2010,378.2 |
| |
| 2019,604.4 |
| 2018,575.4 |
| 2017,514.0 |
| 2016,486.9 |
| 2015,476.9 |
| 2014,482.5 |
| 2013,453.6 |
| 2012,402.3 |
| 2011,349.2 |
| 2010,378.2 |
| |
| ""Not collected for recycling"",80% |
| ""Not documented, fate unknown*"",76% |
| Thrown into household waste,4% |
| ""Documented, collected, and recycled"",20%","Not documented, fate unknown* |
| |
| Not collected for recycling,80% |
| ""Not documented, fate unknown, "",76% |
| Thrown into household waste,4% |
| ""Documented, collected, and recycled, "",20% |
| |
| Free Wi-Fi,49% |
| Free breakfast,14% |
| Proximity to mass transit, transportation and shops,11% |
| Comfortable work chair and desk,6% |
| |
| Free WI-Fi,49% |
| Free breakfast,14% |
| Proximity to mass transit, transportation and shops,11% |
| Comfortable work chair and desk,6% |
| |
| Gaelic learner classes,3996 |
| Gaelic medium education,3168 |
| |
| Gaelic medium education,3168 |
| Gaelic learner classes,3996 |
| |
| 2020,84 |
| 2019,84 |
| 2018,84.14 |
| 2017,83.92 |
| 2016,84.07 |
| 2015,83.88 |
| 2014,83.4 |
| 2013,83.7 |
| |
| 2020,84 |
| 2019,84 |
| 2018,84.14 |
| 2017,83.92 |
| 2016,84.07 |
| 2015,83.88 |
| 2014,83.4 |
| 2013,83.7 |
| |
| Monolith,55937 |
| Monolith brick,55157 |
| Panel,49976 |
| Block,48158 |
| Brick,37392 |
| |
| Monolith,55937 |
| Monolith brick,55157 |
| Panel,49976 |
| Block,48158 |
| Brick,37392 |
| |
| 2017*,1.13% |
| 2016,0.99% |
| 2015,0.96% |
| 2014,0.83% |
| 2013,0.81% |
| 2012,0.7% |
| 2011,0.67% |
| 2010 *,0.6% |
| 2009 *,0.63% |
| 2008 *,0.66% |
| 2007 *,0.58% |
| 2006,0.56% |
| 2005,0.58% |
| 2004,0.53% |
| 2003,0.55% |
| |
| 2017*,1.13% |
| 2016,0.99% |
| 2015,0.96% |
| 2014,0.83% |
| 2013,0.81% |
| 2012,0.7% |
| 2011,0.67% |
| 2010 *,0.6% |
| 2009 *,0.63% |
| 2008*,0.66% |
| 2007*,0.58% |
| 2006,0.56% |
| 2005,0.58% |
| 2004,0.53% |
| 2003,0.55% |
| |
| Pulmonary arterial hypertension,46 |
| Pulmonary veno occlusive disease and/or pulmonary capillary haemosidemiaosis,1 |
| Pulmonary hypertension due to left heart disease,3 |
| Pulmonary hypertension due to lung disease and/or hypoxia,4 |
| Chronic thromboembolic pulmonary hypertension,21 |
| Pulmonary hypertension with unclear/multifactorial mechanisms,2 |
| Not pulmonary hypertension,11 |
| No final diagnosis possible,1 |
| No diagnosis,12 |
| |
| Pulmonary arterial hypertension,46 |
| ""Pulmonary veno occlusive disease and/or pulmonary capillary haemosidema"",1 |
| ""Pulmonary hypertension due to left heart disease"",3 |
| ""Pulmonary hypertension due to lung disease and/or hypoxia"",4 |
| Chronic thromboembolic pulmonary hypertension,21 |
| ""Pulmonary hypertension with unclear/multifactorial mechanisms"",2 |
| Not pulmonary hypertension,11 |
| No final diagnosis possible,1 |
| No diagnosis,12 |
| |
| Passenger cars,71.7% |
| Air,9.6% |
| Bus & Coach,8% |
| Railway,6.9% |
| Powered two-wheelers,1.8% |
| Tram & Metro,1.5% |
| Sea,0.4% |
| |
| Passenger cars,71.7% |
| Air,9.6% |
| Bus & Coach,8% |
| Railway,6.9% |
| Powered two-wheelers,1.8% |
| Tram & Metro,1.5% |
| Sea,0.4% |
| |
| Russian Federation,20% |
| Brazil,12% |
| Canada,9% |
| United States,8% |
| China,5% |
| Democratic Republic of Congo,3% |
| Australia,3% |
| Indonesia,2% |
| Peru,2% |
| India,2% |
| Other,34% |
| |
| Russian Federation,20% |
| Brazil,12% |
| Canada,9% |
| United States,8% |
| China,5% |
| Democratic Republic of the Congo,3% |
| Australia,3% |
| Indonesia,2% |
| Peru,2% |
| India,2% |
| Other,34% |
| |
| 2019**,3.5% |
| 2018*,3.7% |
| 2017,3.5% |
| 2016,3.5% |
| 2015,3.6% |
| 2014,3.6% |
| 2013,3.4% |
| 2012,3.8% |
| 2011,3.8% |
| 2010,4.1% |
| 2009,5.3% |
| 2008,4.9% |
| 2007,4.8% |
| 2006,4.3% |
| 2005,4.2% |
| |
| 2019**,3.5% |
| 2018*,3.7% |
| 2017,3.5% |
| 2016,3.5% |
| 2015,3.6% |
| 2014,3.6% |
| 2013,3.4% |
| 2012,3.8% |
| 2011,3.8% |
| 2010,4.1% |
| 2009,5.3% |
| 2008,4.8% |
| 2007,4.3% |
| 2006,4.2% |
| 2005,4.2% |
| |
| 2020,5.99 |
| 2019,6.24 |
| 2018,6.48 |
| 2017,6.6 |
| 2016,4.16 |
| 2015,4.16 |
| |
| 2020,5.99 |
| 2019,6.24 |
| 2018,6.48 |
| 2017,6.6 |
| 2016,4.16 |
| 2015,4.16 |
| |
| FY 2020,125.3 |
| FY 2019,123.3 |
| FY 2018,118.7 |
| FY 2017,109.0 |
| FY 2016,106.5 |
| FY 2015,106.7 |
| FY 2014,104.8 |
| FY 2013,102.1 |
| |
| FY 2020,125.3 |
| FY 2019,123.3 |
| FY 2018,118.7 |
| FY 2017,109.0 |
| FY 2016,106.5 |
| FY 2015,106.7 |
| FY 2014,104.8 |
| FY 2013,102.1 |
| |
| 2019,72.1% |
| 2018,69.9% |
| 2017,67.4% |
| 2016,66.8% |
| 2015,64.3% |
| 2014,62% |
| 2013,60.6% |
| 2012,55.7% |
| 2011,50.7% |
| 2010,47.7% |
| 2009,41.5% |
| 2008,38.5% |
| 2007,39.8% |
| 2006,37.2% |
| 2005,25.1% |
| 2004,27.8% |
| 2003,23.2% |
| 2002,19.4% |
| 2001,15.8% |
| 2000,12.7% |
| |
| 2019,72.1% |
| 2018,71.1% |
| 2017,67.4% |
| 2016,65.2% |
| 2015,64.3% |
| 2014,62% |
| 2013,60.6% |
| 2012,55.7% |
| 2011,50.7% |
| 2010,48.4% |
| 2009,41.5% |
| 2008,40% |
| 2007,39.8% |
| 2006,38.9% |
| 2005,25.1% |
| 2004,27.8% |
| 2003,23.2% |
| 2002,19.4% |
| 2001,15.8% |
| 2000,12.7% |
| |
| West U.S.,69% |
| South U.S.,68% |
| Canada,68% |
| Northeast U.S.,65% |
| Midwest U.S.,65% |
| |
| West U.S.,69% |
| South U.S.,68% |
| Canada,68% |
| Northeast U.S.,65% |
| Midwest U.S.,65% |
| |
| Yes,24% |
| No,76% |
| I was the victim*,1% |
| |
| Yes,24% |
| No,76% |
| I was the victim*,1% |
| |
| ""Alibaba, Amazon, and eBay"",16% |
| Wildberries,5% |
| Mvideo,5% |
| DNS Group,3% |
| Citilink,3% |
| Ozon,3% |
| Lamoda,3% |
| |
| ""Ali Baba, Amazon, and eBay"",16% |
| Wildberries,5% |
| Mvideo,5% |
| DNS Group,3% |
| Citilink,3% |
| OzOn,3% |
| Lamoda,3% |
| |
| 2019,-6.8% |
| 2018,2.4% |
| 2017,8.5% |
| 2016,15.6% |
| 2015,27.6% |
| 2014,5.3% |
| 2013,12.1% |
| 2012,16.9% |
| 2011,8.8% |
| 2010,21.4% |
| |
| 2019,-6.8% |
| 2018,2.4% |
| 2017,8.5% |
| 2016,15.6% |
| 2015,27.6% |
| 2014,5.3% |
| 2013,12.1% |
| 2012,16.9% |
| 2011,8.8% |
| 2010,21.4% |
| |
| Based on how much we can afford as a family,47% |
| Based on my child's age,29% |
| Based on my child's needs,25% |
| Based on what I know my child's friends receive,7% |
| If my child asks for more, I try to give them more,5% |
| Other,4% |
| Don't know,3% |
| |
| Based on how much we can afford as a family,47% |
| Based on my child's age,29% |
| Based on my child's needs,25% |
| Based on what I know my child's friends receive,7% |
| ""If my child asks for more, I try to give them more"",5% |
| Other,4% |
| Don't know,3% |
| |
| ""I expect consumers to purchase a few, luxury items"",11.9% |
| ""I expect consumers to buy more frivolous fun gifts this Christmas compared with recent years."",36.8% |
| ""I expect practical presents to remain the most popular choice this Christmas."",51.3% |
| |
| I expect consumers to purchase a few, luxury items,11.9% |
| I expect consumers to buy more frivolous fun gifts this Christmas compared with recent years.,36.8% |
| I expect practical presents to remain the most popular choice this Christmas.,51.3% |
| |
| CIC Lyonnaise de Banque,31846 |
| CIC Est,24126 |
| CIC Quest,20393 |
| CIC Nord Ouest,21546 |
| CIC Sud Ouest,15077 |
| |
| CIC Lyonnaise de Banque,31846 |
| CIC Est,24126 |
| CIC Quest,20393 |
| CIC Nord Ouest,21546 |
| CIC Sud Ouest,15077 |
| |
| WhatsApp,67% |
| Facebook,21% |
| Instagram,16% |
| Google,8% |
| eBay Kleinanzeigen,5% |
| Periscope,0% |
| Xing,0.6% |
| Other,1.2% |
| Don't know,12.3%",Periscope |
| "0.2Characteristic,Share of respondents |
| WhatsApp,67% |
| Facebook,21% |
| Instagram,16% |
| Google,8% |
| eBay Kleinanzeigen,5% |
| Periscope,0% |
| Xing,0.6% |
| Other,1.2% |
| Don't know,12.3% |
| |
| Retail,81% |
| Wholesale,17% |
| Rendered services,2% |
| |
| Retail,81% |
| Wholesale,17% |
| Rendered services,2% |
| |
| Roche (Switzerland)*,37.1 |
| Amgen (U.S.),15.6 |
| Novo Nordisk (Denmark)*,12.4 |
| Gilead Sciences (U.S.),8.4 |
| ""Merkc Serono (Germany)"",8.2 |
| Biogen Idec (U.S.),5.0 |
| Celgene (U.S.),4.8 |
| |
| ""Roche (Switzerland)*"",37.1 |
| ""Amgen (U.S.)"",15.6 |
| ""Novo Nordisk (Denmark)*"",12.4 |
| ""Gilead Sciences (U.S.)"",8.4 |
| ""Merck Serono (Germany)*"",8.2 |
| ""Biogen Idec (U.S.)"",5.0 |
| ""Celgene (U.S.)"",4.8 |
| |
| The Simpsons,74.4 |
| Mr. Bean,60.4 |
| SpongeBob SquarePants,58.2 |
| Family Guy,56.3 |
| South Park,50.7 |
| House,44.1 |
| The Big Bang Theory,31.9 |
| Two and a Half Men,30.9 |
| Furturama,30.4 |
| The Walking Dead,29.8 |
| |
| The Simpsons,74.4 |
| Mr. Bean,60.4 |
| SpongeBob SquarePants,58.2 |
| Family Guy,56.3 |
| South Park,50.7 |
| House,44.1 |
| The Big Bang Theory,31.9 |
| Two and a Half Men,30.9 |
| Futurama,30.4 |
| The Walking Dead,29.8 |
| |
| Kit (Nike),26 |
| Jersey (Jeep),19 |
| Stadium (Sportsfive),7 |
| |
| Kit (Nike),26 |
| Jersey (Jeep),19 |
| Stadium (Sportfive),7 |
| |
| 2019,43576 |
| 2018,44759 |
| 2017,42528 |
| 2016,43202 |
| 2015,43544 |
| 2014,42073 |
| 2013,41866 |
| 2012,42220 |
| 2011,41585 |
| 2010,40925 |
| 2009,39978 |
| 2008,41326 |
| 2007,41856 |
| 2006,40340 |
| 2005,39439 |
| 2004,38801 |
| 2003,36807 |
| 2002,35678 |
| 2001,37202 |
| 2000,34716 |
| |
| 2019,43576 |
| 2018,44182 |
| 2017,43330 |
| 2016,42528 |
| 2015,43544 |
| 2014, |
| 2013,41866 |
| 2012,42396 |
| 2011, |
| 2010,40925 |
| 2009,39978 |
| 2008, |
| 2007,41132 |
| 2006,40340 |
| 2005,39439 |
| 2004,38801 |
| 2003,36807 |
| 2002,35678 |
| 2001,34975 |
| 2000,34716 |
| |
| Definitely unlikely,26% |
| Rather unlikely,35% |
| Very likely,14% |
| Rather likely,26% |
| |
| Definitely unlikely,26% |
| Rather unlikely,35% |
| Very likely,14% |
| Rather likely,26% |
| |
| Recipe,75% |
| Comedy,4% |
| Crafts,5% |
| Fitness/Health,3% |
| DIY Home,3% |
| Other*,10% |
| |
| Other*,10% |
| DIY Home,3% |
| Fitness/Health,3% |
| Comedy,4% |
| Crafts,5% |
| Recipe,75% |
| |
| Companion animal,69% |
| Aquatics,31% |
| |
| Companion animal,69% |
| Aquatics,31% |
| |
| United States,64.11% |
| LAAP*,16.97% |
| EMEA,11.95% |
| Canada,6.97% |
| |
| United States,64.11% |
| ""LAAP*16.97"",16.97% |
| EMEA,11.95% |
| Canada,6.97% |
| |
| 2018,14766 |
| 2017,14506 |
| 2015,14607 |
| 2010,13828 |
| 2005,11447 |
| 2000,8937 |
| 1995,8505 |
| 1990,8288 |
| 1985,7392 |
| 1980,6600 |
| 1975,5648 |
| 1971,5230 |
| |
| 2018,14766 |
| 2017,14506 |
| 2015,14607 |
| 2010,13828 |
| 2005,11447 |
| 2000,8937 |
| 1995,8505 |
| 1990,8288 |
| 1985,7392 |
| 1980,6600 |
| 1975,5648 |
| 1971,5230 |
| |
| Don't know,13.9% |
| No,44.5% |
| Yes,41.5%",41.5 |
| "3.4Characteristic,Share of respondents |
| Don't know,13.9% |
| No,44.5% |
| Yes,41.5% |
| |
| Michael Kors,74.82% |
| Versace,15.19% |
| Jimmy Choo,10% |
| |
| Michael Kors,74.82% |
| Versace,15.19% |
| Jimmy Choo,10% |
| |
| UK,26% |
| Germany,16% |
| France,14% |
| Spain,11% |
| Sweden,7% |
| Netherlands,5% |
| Denmark,4% |
| Finland,3% |
| Belgium,2% |
| Switzerland,2% |
| Turkey,2% |
| Other,4% |
| Cyprus,0% |
| |
| UK,26% |
| Germany,16% |
| France,14% |
| Spain,11% |
| Sweden,7% |
| Netherlands,5% |
| Denmark,4% |
| Italy,4% |
| Finland,3% |
| Belgium,2% |
| Switzerland,2% |
| Turkey,2% |
| Cyprus,0% |
| Other,4% |
| |
| Yes,57% |
| No,37% |
| Don't know,6%",6 |
| "1.63918Characteristic,Share of respondents |
| Yes,57% |
| No,37% |
| Don't know,6% |
| |
| Monthly,41.2% |
| Weekly,37.8% |
| Daily,18.2% |
| Stopped using,2.8% |
| |
| Monthly,41.2% |
| Weekly,37.8% |
| Daily,18.2% |
| Stopped using,2.8% |
| |
| Very well,32% |
| Somewhat well,50% |
| Somewhat poorly,13% |
| Very poorly,4% |
| I do not know,2% |
| |
| Very well,32% |
| Somewhat well,50% |
| Somewhat poorly,13% |
| Very poorly,4% |
| I do not know,2% |
| |
| 2015,9.3% |
| 2010,8.5% |
| 1999,7.3% |
| 1990,7.4% |
| 1982,7.4% |
| 1975,7.4% |
| 1968,6.6% |
| 1962,6.2% |
| 1954,5.4% |
| 1946,5% |
| 1936,5.6% |
| 1931,6.6% |
| 1926,5.7% |
| 1921,3.7% |
| |
| 2015,9.3% |
| 2010,8.5% |
| 1999,7.3% |
| 1990,7.4% |
| 1982,7.4% |
| 1975,7.4% |
| 1968,6.6% |
| 1962,6.2% |
| 1954,5.4% |
| 1946,5% |
| 1936,5.6% |
| 1931,6.6% |
| 1926,5.7% |
| 1921,3.7% |
| |
| 2020*,15.7% |
| 2019,19.7% |
| 2018,13.8% |
| 2017,8% |
| 2016,10% |
| 2015,2% |
| 2014,8% |
| |
| 2020*,15.7% |
| 2019,19.7% |
| 2018,13.8% |
| 2017,8% |
| 2016,10% |
| 2015,2% |
| 2014,8% |
| |
| Definitely yes,81.8% |
| Rather so,13.2% |
| Rather not,2.8% |
| Definitely not,2.3% |
| |
| Definitely yes,81.8% |
| Rather so,13.2% |
| Rather not,2.8% |
| Definitely not,2.3% |
| |
| 2020,9.38% |
| 2019,8.8% |
| 2018,7.3% |
| 2017,7.2% |
| 2016,7.44% |
| 2015,7.45% |
| 2014,7.54% |
| 2013,7.51% |
| 2012,6.6% |
| 2011,7.24% |
| 2010,7.11% |
| 2009,6.25% |
| 2008,7.28% |
| 2007,8.63% |
| 2006,8.61% |
| 2005,10.66% |
| 2004,15.07% |
| 2003,16.78% |
| 2002,16.17% |
| 2001,13.04% |
| 2000,13.99% |
| 1999,14.53% |
| |
| 2020,9.38% |
| 2019,8.8% |
| 2018,7.37% |
| 2017,7.3% |
| 2016,7.44% |
| 2015,7.44% |
| 2014,7.54% |
| 2013,7.54% |
| 2012,6.6% |
| 2011,6.6% |
| 2010,7.11% |
| 2009,6.25% |
| 2008,7.28% |
| 2007,7.28% |
| 2006,8.61% |
| 2005,10.66% |
| 2004,15.07% |
| 2003,16.78% |
| 2002,16.17% |
| 2001,13.04% |
| 2000,13.99% |
| 1999,14.53% |
| |
| Male,10335 |
| Female,1408 |
| Unknown,4502 |
| |
| Male,10335 |
| Female,1408 |
| Unknown,4502 |
| |
| 2019,39099 |
| 2018,38477 |
| 2017,37860 |
| 2016,37162 |
| 2015,36124 |
| 2014,35615 |
| 2013,36459 |
| 2012,35906 |
| 2011,35724 |
| 2010,35231 |
| 2009,35023 |
| 2008,33974 |
| 2007,33889 |
| 2006,33889 |
| 2005,33121 |
| 2004,32782 |
| 2003,32315 |
| 2002,31700 |
| 2001,32439 |
| 2000,31247 |
| |
| 2019,39099 |
| 2018,38677 |
| 2017,37860 |
| 2016,37162 |
| 2015,37142 |
| 2014,36459 |
| 2013,36492 |
| 2012,35906 |
| 2011,35724 |
| 2010,35233 |
| 2009,35023 |
| 2008,33974 |
| 2007,33332 |
| 2006,33889 |
| 2005,33121 |
| 2004,32062 |
| 2003,32305 |
| 2002,32020 |
| 2001,31635 |
| 2000,31247 |
| |
| Staying alert and trustworthy,57% |
| Don't believe it can impact us or anything,12% |
| Can't say,18% |
| Don't know much about coronavirus,3% |
| Don't believe it can impact us,3% |
| |
| Staying alert and test...,-,93% |
| Don't believe it can impact us or...,,, |
| Can't say,6%,0% |
| Don't know much about coronavirus,3%,0% |
| Don't believe it can impact us,3%,0% |
| |
| 18-24,18% |
| 25-34,32% |
| 35-44,19% |
| 45-54,14% |
| 55-64,10% |
| 65+,7% |
| |
| 18-24,18% |
| 25-34,32% |
| 35-44,19% |
| 45-54,14% |
| 55-64,10% |
| 65+,7% |
| |
| Corn,1116.34 |
| Wheat,764.49 |
| Rice (milled),495.78 |
| Barley,156.41 |
| Sorghum,57.97 |
| Oats,22.83 |
| Rye,12.17 |
| |
| Corn,116.34 |
| Wheat,764.49 |
| Rice (milled),495.78 |
| Barley,156.41 |
| Sorghum,57.97 |
| Oats,22.83 |
| Rye,12.17 |
| |
| Alaska,91817 |
| Georgia,24352 |
| Oregon,24116 |
| Alabama,22800 |
| Mississippi,19495 |
| Michigan,19262 |
| Arkansas,18544 |
| Montana,18429 |
| Washington,18081 |
| North Carolina,18078 |
| |
| Alaska,91817 |
| Georgia,24352 |
| Oregon,24116 |
| Alabama,22800 |
| Mississippi,19495 |
| Michigan,19262 |
| Arkansas,18544 |
| Montana,18429 |
| Washington,18081 |
| North Carolina,18078 |
| |
| 2026*,86.71% |
| 2025*,83.29% |
| 2024*,80.42% |
| 2023*,77.29% |
| 2022*,69.61% |
| 2021*,66.83% |
| 2020*,57.05% |
| 2019,66.33% |
| 2018,57.05% |
| 2017,51.73% |
| 2016,48.24% |
| 2015,39.97% |
| 2014,39.97% |
| 2013,37.04% |
| 2012,33.77% |
| 2011,33.77% |
| 2010,33.77% |
| 2009,34.57% |
| |
| 2026*,87.35% |
| 2025*,83.29% |
| 2024*,80.42% |
| 2023*,77.29% |
| 2022*,69.61% |
| 2021*,66.83% |
| 2020*,65.48% |
| 2019,57.05% |
| 2018,55.04% |
| 2017,51.73% |
| 2016,48.24% |
| 2015,39.97% |
| 2014,37.04% |
| 2013,35.66% |
| 2012,37.04% |
| 2011,33.77% |
| 2010,31.36% |
| 2009,34.57% |
| |
| MLB (2015),31.0 |
| NBA (2015/16),55.88 |
| NHL (2014/15),62.18 |
| NFL (2016),92.98 |
| |
| ""NFL (2016)"",92.98 |
| ""NHL (2014/15)"",62.18 |
| ""NBA (2015/16)"",55.88 |
| ""MLB (2015)"",31 |
| |
| 2020,11.4% |
| 2019,11.35% |
| 2018,11.28% |
| 2017,11.41% |
| 2016,11.55% |
| 2015,11.62% |
| 2014,11.69% |
| 2013,11.78% |
| 2012,11.75% |
| 2011,11.72% |
| 2010,11.62% |
| 2009,11.21% |
| 2008,11.11% |
| 2007,11.27% |
| 2006,11.46% |
| 2005,11.67% |
| 2004,11.77% |
| 2003,11.84% |
| 2002,11.79% |
| 2001,11.76% |
| 2000,11 |
| |
| 2020,11.4% |
| 2019,11.35% |
| 2018,11.28% |
| 2017,11.41% |
| 2016,11.55% |
| 2015,11.62% |
| 2014,11.69% |
| 2013,11.78% |
| 2012,11.75% |
| 2011,11.72% |
| 2010,11.62% |
| 2009,11.21% |
| 2008,11.27% |
| 2007,11.24% |
| 2006,11.46% |
| 2005,11.67% |
| 2004,11.77% |
| 2003,11.84% |
| 2002,11.92% |
| 2001,11.76% |
| 2000,11. |
| |
| Less than a minute,4% |
| 1-5 mins,29% |
| 6-10 mins,31% |
| 11-20 mins,27% |
| 21-30 mins,7% |
| 31-60 mins,1% |
| |
| Less than a minute,4% |
| 1-5 mins,29% |
| 6-10 mins,31% |
| 11-20 mins,27% |
| 21-30 mins,7% |
| 31-60 mins,1% |
| |
| 2021*,827 |
| 2020,1417 |
| 2019,1885 |
| 2018,2299 |
| 2017,3139 |
| 2016,5143 |
| 2015,4054 |
| 2014,3283 |
| |
| 2021*,827 |
| 2020,1417 |
| 2019,1885 |
| 2018,2299 |
| 2017,3139 |
| 2016,5143 |
| 2015,4054 |
| 2014,3283 |
| |
| ""White alone"",5212705 |
| ""Black or African American alone"",1625942 |
| ""Hispanic or Latino (of any race)"",828154 |
| Asian alone,560030 |
| ""Two or more races"",263515 |
| ""Some other race alone"",23329 |
| ""American Indian and Alaska Native alone"",17497 |
| Native Hawaiian and Other Pacific Islander alone,4347 |
| |
| White alone,5212705 |
| ""Black or African American alone"",1625942 |
| ""Hispanic or Latino (of any race)"",828154 |
| Asian alone,560030 |
| ""Two or more races"",263515 |
| ""Some other race alone"",23329 |
| ""American Indian and Alaska Native alone"",17497 |
| ""Native Hawaiian and Other Pacific Islander alone"",4347 |
| |
| 2020,- |
| 2019,1.84% |
| 2018,- |
| 2017,1.79% |
| 2016,1.75% |
| 2015,1.86% |
| 2014,1.88% |
| 2013,1.91% |
| 2012,3.58% |
| 2011,3.62% |
| 2010,3.6% |
| 2009,2.89% |
| 2008,2.5% |
| 2007,2.19% |
| 2006,2.01% |
| 2005,1.9% |
| 2004,2.68% |
| 2003,3.56% |
| 2002,3.16% |
| 2001,3.01% |
| 2000,2.83% |
| 1999,2.56%","[2003,2009] |
| |
| 2020,1.84% |
| 2019,1.85% |
| 2018,1.79% |
| 2017,1.8% |
| 2016,1.79% |
| 2015,1.82% |
| 2014,1.86% |
| 2013,1.91% |
| 2012,3.56% |
| 2011,3.58% |
| 2010,3.6% |
| 2009,2.89% |
| 2008,2.5% |
| 2007,2.19% |
| 2006,2.5% |
| 2005,1.9% |
| 2004,2.68% |
| 2003,3.56% |
| 2002,3.16% |
| 2001,3.48% |
| 2000,2.83% |
| 1999,2.56% |
| |
| California,115347 |
| New York,94152 |
| Texas,66916 |
| Florida,59065 |
| Pennsylvania,53532 |
| Illinois,45039 |
| Ohio,44178 |
| Michigan,40807 |
| Massachusetts,37494 |
| New Jersey,31545 |
| |
| California,115347 |
| New York,94152 |
| Texas,66916 |
| Florida,59065 |
| Pennsylvania,53532 |
| Illinois,45039 |
| Ohio,44178 |
| Michigan,40807 |
| Massachusetts,37494 |
| New Jersey,31545 |
| |
| 2019,15017 |
| 2018,14310 |
| 2017,13931 |
| 2016,13539 |
| 2015,13116 |
| 2014,12613 |
| 2013,12406 |
| 2012,12280 |
| 2011,12277 |
| 2010,11967 |
| 2009,11462 |
| 2008,10987 |
| 2007,10344 |
| 2006,10177 |
| 2005,10012 |
| 2004,9402 |
| 2003,9052 |
| 2002,8767 |
| 2001,8606 |
| 2000,8449 |
| |
| 2019,15017 |
| 2018,14310 |
| 2017,13931 |
| 2016,13539 |
| 2015,13116 |
| 2014,12613 |
| 2013,12300 |
| 2012,12183 |
| 2011,12280 |
| 2010,11967 |
| 2009,11462 |
| 2008,10980 |
| 2007,10344 |
| 2006,10012 |
| 2005,9794 |
| 2004,9402 |
| 2003,9052 |
| 2002,8930 |
| 2001,8606 |
| 2000,8378 |
| |
| 2019,19.6% |
| 2018,19.7% |
| 2017,19.8% |
| 2016,20.8% |
| 2015,22% |
| 2014,21.5% |
| 2013,24% |
| 2012,24.2% |
| 2011,22.4% |
| 2010,22.9% |
| 2009,21.9% |
| 2008,21.2% |
| 2007,20.6% |
| 2006,20.5% |
| 2005,21.3% |
| 2004,21.6% |
| 2003,19.6% |
| 2002,19.9% |
| 2001,18.6% |
| 2000,18.2% |
| |
| 2019,19.6% |
| 2018,19.8% |
| 2017,20.8% |
| 2016,- |
| 2015,22% |
| 2014,21.5% |
| 2013,24% |
| 2012,24.2% |
| 2011,- |
| 2010,22.4% |
| 2009,21.9% |
| 2008,21.2% |
| 2007,20.6% |
| 2006,- |
| 2005,21.3% |
| 2004,21.6% |
| 2003,20.6% |
| 2002,19.9% |
| 2001,18.6% |
| 2000,18.2% |
| |
| More often than usual,17% |
| About the same as usual,53% |
| Less often than usual,27% |
| Not sure,3% |
| |
| More often than usual,17% |
| Less often than usual,27% |
| About the same as usual,53% |
| Not sure,3% |
| |
| - 90 years and older,19.4% |
| - 80-89 years,40.5% |
| - 70-79 years,25.2% |
| - 60-69 years,10.2% |
| - 50-59 years,3.5% |
| - 40-49 years,0.9% |
| - 30-39 years,0.2% |
| - 20-29 years,0.1% |
| |
| ""90 years and older"",19.4% |
| ""80-89 years"",40.5% |
| ""70-79 years"",25.2% |
| ""60-69 years"",10.2% |
| ""50-59 years"",3.5% |
| ""40-49 years"",0.9% |
| ""30-39 years"",0.2% |
| ""20-29 years"",0.1% |
| |
| 2020,1.38 |
| 2019,1.36 |
| 2018,1.35 |
| 2017,1.38 |
| 2016,1.38 |
| 2015,1.37 |
| 2014,1.27 |
| 2013,1.25 |
| 2012,1.25 |
| 2011,1.26 |
| 2010,1.36 |
| 2009,1.45 |
| |
| 2020,1.38 |
| 2019,1.36 |
| 2018,1.35 |
| 2017,1.38 |
| 2016,1.38 |
| 2015,1.37 |
| 2014,1.27 |
| 2013,1.25 |
| 2012,1.25 |
| 2011,1.26 |
| 2010,1.36 |
| 2009,1.45 |
| |
| 2020,14.5% |
| 2019,13.58% |
| 2018,14.2% |
| 2017,13.86% |
| 2016,13.91% |
| 2015,13.72% |
| 2014,14.02% |
| 2013,14% |
| 2012,14.1% |
| 2011,14.7% |
| 2010,15.34% |
| 2009,16.57% |
| 2008,16.04% |
| 2007,16.8% |
| 2006,15.7% |
| 2005,14.39% |
| 2004,13.12% |
| 2003,11.86% |
| 2002,10.59% |
| 2001,9.34% |
| 2000,8.23% |
| 1999, |
| |
| 2020,14.5% |
| 2019,13.58% |
| 2018,13.8% |
| 2017,13.8% |
| 2016,13.86% |
| 2015,13.9% |
| 2014,14.02% |
| 2013,14.1% |
| 2012,14.1% |
| 2011,14.7% |
| 2010,15.34% |
| 2009,16.04% |
| 2008,16.8% |
| 2007,16.8% |
| 2006,15.57% |
| 2005,14.39% |
| 2004,13.12% |
| 2003,11.86% |
| 2002,10.59% |
| 2001,9.34% |
| 2000,8.23% |
| 1999, |
| |
| Mercadona,24.7% |
| Carrefour,8.6% |
| Lidl,6.3% |
| Grupo Dia,5.5% |
| Grupo Eroski,4.8% |
| Grupo Auchan (Alcampo),3.3% |
| |
| Mercadona,24.7% |
| Carrefour,8.6% |
| Lidl,6.3% |
| Grupo Día,5.5% |
| Grupo Eroski,4.8% |
| Grupo Auchan (Alcampo),3.3% |
| |
| FY 2020,428.08 |
| FY 2019,446.13 |
| FY 2018,456.12 |
| FY 2017,401.68 |
| FY 2016,364.0 |
| FY 2015,354.68 |
| |
| FY 2020,428.08 |
| FY 2019,446.13 |
| FY 2018,456.12 |
| FY 2017,401.68 |
| FY 2016,364.0 |
| FY 2015,354.68 |
| |
| 2020,451176.9 |
| 2019,476343.6 |
| 2018,460370.1 |
| 2017,445050.1 |
| 2016,430085.3 |
| 2015,416701.4 |
| 2014,403003.3 |
| 2013,392880.0 |
| 2012,386174.7 |
| 2011,375967.8 |
| |
| 2020,451176.9 |
| 2019,476343.6 |
| 2018,460370.1 |
| 2017,445050.1 |
| 2016,430085.3 |
| 2015,416701.4 |
| 2014,403003.3 |
| 2013,392880.0 |
| 2012,386174.7 |
| 2011,375967.8 |
| |
| May '21,126.38 |
| Apr '21,125.8 |
| Mar '21,125.6 |
| Feb '21,124.87 |
| Jan '21,124.99 |
| Dec '20,124.69 |
| Nov '20,124.29 |
| Oct '20,123.65 |
| Sep '20,122.57 |
| Aug '20,122.46 |
| Jul '20,119.53 |
| Jun '20,118.94 |
| May '20,116.55",May '21 |
| |
| May '21,126.38 |
| Apr '21,125.8 |
| Mar '21,125.87 |
| Feb '21,124.99 |
| Jan '21,124.87 |
| Dec '20,124.99 |
| Nov '20,124.29 |
| Oct '20,123.65 |
| Sep '20,122.57 |
| Aug '20,122.46 |
| Jul '20,119.53 |
| Jun '20,118.94 |
| May '20,116.55",2.93 |
| "CanadaCharacteristic,Market share |
| United States,28% |
| European Union,26% |
| India,18% |
| China,13% |
| Canada,2% |
| Rest of the world,13%",Canada |
| "31Characteristic,Share of reserves |
| United States,28% |
| European Union,26% |
| India,18% |
| China,13% |
| Canada,2% |
| Rest of the world,13%",31 |
| "2010Characteristic,Production in million metric tons |
| 2019,86.44 |
| 2018,86.36 |
| 2017,82.45 |
| 2016,78.5 |
| 2015,89.13 |
| 2014,78.51 |
| 2013,89.13 |
| 2012,87.04 |
| 2011,83.34 |
| 2010,75.7 |
| 2009,56.4 |
| 2008,88.77 |
| 2007,97.62 |
| 2006,98.53 |
| 2005,95.23 |
| 2004,101.68 |
| 2003,96.14 |
| 2002,98.01 |
| 2001,89.76 |
| 2000,98.93",2009 |
| "46.86Characteristic,Production in million metric tons |
| 2019,86.44 |
| 2018,82.04 |
| 2017,82.45 |
| 2016,78.5 |
| 2015,78.51 |
| 2014,89.13 |
| 2013,89.13 |
| 2012,87.04 |
| 2011,83.34 |
| 2010,75.7 |
| 2009,56.4 |
| 2008,88.77 |
| 2007,98.53 |
| 2006,97.56 |
| 2005,95.23 |
| 2004,101.68 |
| 2003,96.14 |
| 2002,91.46 |
| 2001,89.76 |
| 2000,98.93",45.28 |
| "50.4Characteristic,Distribution of sales |
| Flanders,50.4% |
| Wallonia,36.6% |
| Brussels,13%",50.4 |
| "49.7Characteristic,Share of respondents |
| Flanders,50.4% |
| Wallonia,36.6% |
| Brussels,13%",87 |
| "2Characteristic,Net sales share |
| Europe,40% |
| North America,24% |
| Asia,24% |
| South America,6% |
| Africa and Oceania,6%",2 |
| "12Characteristic,Market share |
| Europe,40% |
| North America,24% |
| Asia,24% |
| South America,6% |
| Africa and Oceania,6%",12 |
| "6Characteristic,Market size share |
| Manufacturing,40.7% |
| Financial and insurance services,18.43% |
| ""Transport, mailing & storage"",11.8% |
| Trade,7.15% |
| Mining,5.52% |
| Electricity generation,3.99% |
| Other,13.01%",7 |
| "Electricity generationCharacteristic,Share of employers |
| Manufacturing,40.1% |
| Financial and insurance services,18.43% |
| ""Transport, mailing & storage"",11.3% |
| Trade,7.15% |
| Mining,5.52% |
| Electricity generation,3.99% |
| Other,13.01%",Mining |
| "Trygg-HansaCharacteristic,Market share |
| Länsförsäkringar,30.3% |
| If Skadeförsäkring,18.2% |
| Folksam,16.4% |
| Trygg-Hansa,13.7% |
| Moderna,3.3% |
| Other Swedish companies,4.3% |
| Other,13.8%",Moderna |
| "FolksamCharacteristic,Market share |
| Länsförsäkringar,30.3% |
| If Skadeförsäkring,18.2% |
| Folksam,16.4% |
| Trygg-Hansa,13.7% |
| Moderna,3.3% |
| Other Swedish companies,4.3% |
| Other,13.8%",Folksam |
| "YesCharacteristic,E-commerce sales growth rate |
| 2021*,9.7% |
| 2020*,13.6% |
| 2019*,17.5% |
| 2018*,22% |
| 2017*,25% |
| 2016,25.9%",Yes |
| "2016Characteristic,E-commerce sales growth rate |
| 2021*,9.7% |
| 2020*,13.6% |
| 2019*,17.5% |
| 2018*,22% |
| 2017*,25% |
| 2016,25.9%",2016 |
| "May '21Characteristic,Chained consumer Price Index (1999=100) |
| May '21,151.25 |
| Apr '21,150.07 |
| Mar '21,148.84 |
| Feb '21,147.8 |
| Jan '21,146.98 |
| Dec '20,146.33 |
| Nov '20,146.21 |
| Oct '20,146.31 |
| Sep '20,146.27 |
| Aug '20,146.05 |
| Jul '20,145.6 |
| Jun '20,144.85 |
| May '20,144.02",May '21 |
| |
| May '21,151.25 |
| Apr '21,150.07 |
| Mar '21,148.84 |
| Feb '21,148.05 |
| Jan '21,146.98 |
| Dec '20,146.33 |
| Nov '20,146.21 |
| Oct '20,146.31 |
| Sep '20,146.27 |
| Aug '20,146.05 |
| Jul '20,145.6 |
| Jun '20,144.85 |
| May '20,143.04",7.23 |
| "35900Characteristic,Reserves in million metric tons |
| Russia*,90447 |
| Australia,76508 |
| Germany,35900 |
| United States,30003 |
| Indonesia,11728 |
| Turkey,10975 |
| China,8128 |
| Serbia,7112 |
| New Zealand,6750 |
| Poland,5865",6750 |
| "FranceCharacteristic,Reserves in million metric tons |
| Russia*,90447 |
| Australia,76508 |
| Germany,35900 |
| United States,30003 |
| Indonesia,11728 |
| Turkey,10975 |
| China,8128 |
| Serbia,7112 |
| New Zealand,6750 |
| Poland,5865","[Germany,United States]" |
| "22Characteristic,Retail sales share |
| Bed & bathroom,22% |
| Living room,19% |
| Kitchen & dining,15% |
| Children's IKEA,5% |
| IKEA food,5% |
| Other,34% |
| |
| Bed & bathroom,22% |
| Living room,19% |
| Kitchen & dining,15% |
| Children's IKEA,5% |
| IKEA food,5% |
| Other,34%",0 |
| "GroceryCharacteristic,Market share |
| Grocery,56.3% |
| General merchandise,32.3% |
| Health and wellness,10.4% |
| Other,1%",Grocery |
| "33.7Characteristic,Share of net sales |
| Grocery,56.3% |
| General merchandise,32.3% |
| Health and wellness,10.4% |
| Other,1%",11.4 |
| "TizenCharacteristic,Market share |
| Tizen,22% |
| WebOS,14% |
| Android TV*,10% |
| Robku TV,8% |
| FireFox OS/My Home Screen**,8% |
| Amazon Fire TV Edition,6% |
| Others***,3%",Robku TV |
| "14Characteristic,Market share |
| Tizen,22% |
| WebOS,14% |
| Android TV*,10% |
| Robku TV,8% |
| FireFox OS/My Home Screen**,8% |
| Amazon Fire TV Edition,6% |
| Others***,3%",14 |
| "2007Characteristic,Number of fatalities |
| 2019,270 |
| 2018,260 |
| 2017,276 |
| 2016,275 |
| 2015,310 |
| 2014,295 |
| 2013,251 |
| 2012,352 |
| 2011,325 |
| 2010,353 |
| 2009,384 |
| 2008,606 |
| 2007,661 |
| 2006,608",2007 |
| "408Characteristic,Number of fatalities |
| 2019,270 |
| 2018,260 |
| 2017,276 |
| 2016,275 |
| 2015,310 |
| 2014,295 |
| 2013,251 |
| 2012,352 |
| 2011,325 |
| 2010,353 |
| 2009,384 |
| 2008,606 |
| 2007,661 |
| 2006,608",410 |
| "28.49Characteristic,Population density in people per square kilometer |
| 2018,30.6 |
| 2017,29.71 |
| 2016,29.28 |
| 2015,28.87 |
| 2014,28.49 |
| 2013,28.14 |
| 2012,27.8 |
| 2011,27.44 |
| 2010,27.06 |
| 2009,26.66",28.49 |
| "60.48Characteristic,Population density in people per square kilometer |
| 2018,30.6 |
| 2017,29.71 |
| 2016,29.28 |
| 2015,28.87 |
| 2014,28.49 |
| 2013,28.14 |
| 2012,27.8 |
| 2011,27.44 |
| 2010,27.06 |
| 2009,26.66",60.31 |
| "2.06Characteristic,Exchange rate in Singapore dollars |
| 2020,1.86 |
| 2019,1.94 |
| 2018,1.97 |
| 2017,2.12 |
| 2016,2.06 |
| 2015,2.14 |
| 2014,2.08 |
| 2013,2.14 |
| 2012,2.34 |
| 2011,2.7 |
| 2010,2.98 |
| 2009,3.01",2.06 |
| "1.4Characteristic,Exchange rate in Singapore dollars |
| 2020,1.86 |
| 2019,1.94 |
| 2018,1.97 |
| 2017,2.12 |
| 2016,2.06 |
| 2015,2.14 |
| 2014,2.08 |
| 2013,2.14 |
| 2012,2.34 |
| 2011,2.7 |
| 2010,2.98 |
| 2009,3.01",12 |
| "PhilosophyCharacteristic,Sales in thousand euros |
| Moschino,262507 |
| Pollini,35920 |
| Alberta Ferretti,26144 |
| Philosophy,18244 |
| Other,8588",Philosophy |
| "131034.5Characteristic,Sales in thousand euros |
| Moschino,262507 |
| Pollini,35920 |
| Alberta Ferretti,26144 |
| Philosophy,18244 |
| Other,8588",131253.5 |
| "Online authorized dealersSales channel,Own mono-brand boutique,Online authorized dealers,Brick and mortar mono- brand stores,Brick and mortar authorized deals |
| 67%,42%,36%,24%",Online authorized dealers |
| "46.8Sales channel,Share of respondents |
| Own mono-brand e-,67% |
| Online authorized dealers,42% |
| Brick and mortar mono-brand stores,36% |
| Brick and mortar authorized deals,24%",42.25 |
| "10Characteristic,Percentage of population |
| 2019,9.3% |
| 2018,8.8% |
| 2017,9.5% |
| 2016,9.3% |
| 2015,10.6% |
| 2014,11.4% |
| 2013,10.8% |
| 2012,11.6% |
| 2011,12% |
| 2010,10.7% |
| 2009,10.4% |
| 2008,9.1% |
| 2007,8% |
| 2006,9.3% |
| 2005,9.8% |
| 2004,10.6% |
| 2003,10.9% |
| 2002,10.1% |
| 2001,10.4% |
| 2000,8.8%",20 |
| "7Characteristic,Percentage of population |
| 2019,9.3% |
| 2018,8.8% |
| 2017,9.5% |
| 2016,9.3% |
| 2015,10.6% |
| 2014,11.4% |
| 2013,10.8% |
| 2012,11.6% |
| 2011,12% |
| 2010,10.7% |
| 2009,10.4% |
| 2008,9.1% |
| 2007,8% |
| 2006,9.3% |
| 2005,9.8% |
| 2004,10.6% |
| 2003,10.9% |
| 2002,10.1% |
| 2001,10.4% |
| 2000,8.8%",3 |
| "4Characteristic,GDP in billion U.S. dollars |
| ""New York, U.S."",44 |
| ""Tokyo, Japan"",40 |
| ""Beijing, China"",10 |
| ""Osaka, Japan"",10 |
| ""Shanghai, China"",10 |
| ""Sao Paulo, Brazil"",8 |
| ""Bombay, India"",7 |
| ""Guangzhou, China"",6 |
| ""Mexico City, Mexico"",5 |
| ""Delhi, India"",4",3 |
| "84Characteristic,GDP in billion U.S. dollars |
| ""New York, U.S."",44 |
| ""Tokyo, Japan"",40 |
| ""Beijing, China"",10 |
| ""Osaka, Japan"",10 |
| ""Shanghai, China"",10 |
| ""Sao Paulo, Brazil"",8 |
| ""Bombay, India"",7 |
| ""Guangzhou, China"",6 |
| ""Mexico City, Mexico"",5 |
| ""Delhi, India"",4",93 |
| "CanadaCharacteristic,Export value in million GBP |
| Canada,6.02 |
| United States,5.48 |
| Irish Republic,4.63 |
| Germany,2.82 |
| Australia,1.39",Canada |
| "0.66Characteristic,Export value in million GBP |
| Canada,6.02 |
| United States,5.48 |
| Irish Republic,4.63 |
| Germany,2.82 |
| Australia,1.39",1.43 |
| "13942Characteristic,Number of deaths |
| Any opioid,47600 |
| Synthetic opioids other than methodone,28466 |
| Prescription opioids,17029 |
| Heroin,15482 |
| Natural and semi-synthetic opioids,14495 |
| Cocaine,13942 |
| Psychostimulants with abuse potential,10333 |
| Methadone,3194",13942 |
| "46827.5Characteristic,Number of deaths |
| Any opioid,47600 |
| Synthetic opioids other than methodone,28466 |
| Prescription opioids,17029 |
| Heroin,15482 |
| Natural and semi-synthetic opioids,14495 |
| Cocaine,13942 |
| Psychostimulants with abuse potential,10333 |
| Methadone,3194",25397 |
| "6Characteristic,Average daily usage time in minutes |
| Indonesia,66 |
| India,62 |
| Philippines,56 |
| China,55 |
| Malaysia,54 |
| Thailand,50 |
| South Korea,50 |
| Vietnam,47 |
| Singapore,46 |
| Japan,38",10 |
| "[Vietnam, South Korea]Characteristic,Average daily usage time in minutes |
| Indonesia,66 |
| India,62 |
| Philippines,56 |
| China,55 |
| Malaysia,54 |
| Thailand,50 |
| South Korea,50 |
| Vietnam,47 |
| Singapore,46 |
| Japan,38","[Thailand, South Korea]" |
| "6Characteristic,Demand in million metric tons |
| 2015*,63.9 |
| 2014*,61.2 |
| 2013*,58.5 |
| 2012*,55.8 |
| 2011*,52.8 |
| 2010*,50.7 |
| 2009,49.1 |
| 2008,54.0",8 |
| "58.1Characteristic,Demand in million metric tons |
| 2015*,63.9 |
| 2014*,61.2 |
| 2013*,58.5 |
| 2012*,55.8 |
| 2011*,52.8 |
| 2010*,50.7 |
| 2009,49.1 |
| 2008,54.0",61.2 |
| "48Characteristic,Share of respondents |
| 2013,48% |
| 2011,43% |
| 2009,33% |
| 2007,26% |
| 2005,18%",48 |
| "35.5Characteristic,Share of respondents |
| 2013,48% |
| 2011,43% |
| 2009,33% |
| 2007,26% |
| 2005,18%",33.6 |
| "6Characteristic,Sales growth rate |
| Face masks,100% |
| Alcohol-based hand sanitizers,623%",6.23 |
| "523Characteristic,Sales growth rate |
| Face masks,100% |
| Alcohol-based hand sanitizers,623%",200 |
| "6Characteristic,Market share |
| United States,23.7% |
| United Kingdom,15.57% |
| Italy,10.63% |
| China,6.63% |
| France,6.07% |
| Australia,5.89% |
| Germany,5.33% |
| Denmark,0.16% |
| Other,26%",8 |
| "39.4Characteristic,Distribution of sales |
| United States,23.7% |
| United Kingdom,15.57% |
| Italy,10.63% |
| France,6.07% |
| China,6.63% |
| Australia,5.89% |
| Germany,5.33% |
| Denmark,0.16% |
| Other,26%",39.27 |
| "3Characteristic,Market size share |
| Fast-moving consumer goods,53% |
| Hardlines & leisure goods,28% |
| Apparel & Accessories,10% |
| Diversified,5%",5 |
| "0.5Characteristic,Market share |
| Fast-moving consumer goods,- |
| Hardlines & leisure goods,- |
| Apparel & Accessories,10% |
| Diversified,5%",0.5 |
| "Revenue from retail sales of Samsung electronicsCharacteristic,Estimated revenue in billion U.S. dollars |
| 2019,51.9 |
| 2018,50.19 |
| 2017,46.24 |
| 2016,43.59 |
| 2015,40.7 |
| 2014,38.12 |
| 2013,37.79 |
| 2012,34.83 |
| 2011,31.3 |
| 2010,30.87 |
| 2009,29.18 |
| 2008,28.41 |
| 2007,30.67 |
| 2006,27.88 |
| 2005,26.01 |
| 2004,24.57 |
| 2003,22.41 |
| 2002,21.1 |
| 2001,20.36 |
| 2000,21.58",Estimated revenue in billion U.S. dollars |
| "2018Characteristic,Estimated revenue in billion U.S. dollars |
| 2019,51.9 |
| 2018,50.19 |
| 2017,46.24 |
| 2016,43.59 |
| 2015,40.7 |
| 2014,38.12 |
| 2013,36.69 |
| 2012,34.83 |
| 2011,31.3 |
| 2010,30.87 |
| 2009,29.18 |
| 2008,29.69 |
| 2007,30.67 |
| 2006,27.88 |
| 2005,28.3 |
| 2004,24.57 |
| 2003,22.41 |
| 2002,21.1 |
| 2001,21.58",2009 |
| "28Characteristic,Users in millions |
| Facebook,36.9 |
| Instagram,27.7 |
| LinkedIn,18.6 |
| Pinterest,16.7 |
| Twitter,10.0 |
| TikTok,6.6 |
| Reddit,2.8",16.7 |
| "29Characteristic,Users in millions |
| Facebook,36.9 |
| Instagram,27.7 |
| LinkedIn,18.6 |
| Pinterest,16.7 |
| Twitter,10.0 |
| TikTok,6.6 |
| Reddit,2.8",3.38 |
| "2018Characteristic,Revenue in million euros |
| 2020*,3922 |
| 2019,3613 |
| 2018,3276 |
| 2017,1928 |
| 2016,1785 |
| 2015,1676 |
| 2014,1581 |
| 2013,1484",2018 |
| "3199.46Characteristic,Revenue in million euros |
| 2020*,3922 |
| 2019,3613 |
| 2018,3276 |
| 2017,1928 |
| 2016,1785 |
| 2015,1676 |
| 2014,1581 |
| 2013,1484",2408.125 |
| "Dark BlueCharacteristic,Share of respondents |
| Beef,26% |
| Poultry,19% |
| Pork,19% |
| Fish and seafood,16% |
| Eggs,7% |
| Other meats,13%",red |
| "0Characteristic,Share of expenditures |
| Beef,26% |
| Poultry,19% |
| Pork,19% |
| Fish and seafood,16% |
| Eggs,7% |
| Other meats,13%",2.33 |
| "24Characteristic,Share of respondents |
| No. I don't have any,37% |
| ""Yes. I have a few"",35% |
| ""Yes. lots of them"",24% |
| ""What is a vinyl record?"",4% |
| |
| . No. I don't have any,37% |
| . Yes. I have a few,35% |
| - Yes. lots of them,24% |
| What is a vinyl record?,4%",59 |
| "11Characteristic,Revenue share |
| United States,26.8% |
| Australia,9.3% |
| France,7.1% |
| Germany,6.1% |
| Netherlands,4.7% |
| Canada,4% |
| Spain,3.5% |
| Other countries,38.5%",8 |
| "0.46Characteristic,Share of respondents |
| United States,26.8% |
| Australia,9.3% |
| France,7.1% |
| Germany,6.1% |
| Netherlands,4.7% |
| Canada,4% |
| Spain,3.5% |
| Other countries,38.5%",36.1 |
| "32.4Characteristic,Market value share |
| Beer,32.4% |
| Food,25.5% |
| Spirits and spirit-based drinks,15.7% |
| Wine,11% |
| ""Cider"",5.1% |
| Other,10.3%",32.4 |
| "30Characteristic,Revenue share |
| Beer,32.4% |
| Food,25.5% |
| Spirits and spirit-based drinks,15.7% |
| Wine,11% |
| Cider,5.1% |
| Other,10.3%",67.6 |
| "4Characteristic,Share of respondents |
| Internet,35% |
| Social media,26% |
| Television,21% |
| Friends & family,7% |
| Newspapers,6% |
| Other,4% |
| I don't keep myself updated,2% |
| |
| Internet,35% |
| Social media,26% |
| Television,21% |
| Friends & family,7% |
| Newspapers,6% |
| I don't keep myself updated,2% |
| Other,4%",9 |
| "2015Characteristic,Growth rate |
| 2019*,14.4% |
| 2018*,14.9% |
| 2017*,15.8% |
| 2016*,17.6% |
| 2015*,17.7% |
| 2014,18.6% |
| 2013,16.6% |
| 2012,17.7%",2014 |
| "2Characteristic,Growth rate |
| 2019*,14.4% |
| 2018*,14.9% |
| 2017*,15.8% |
| 2016*,17.6% |
| 2015*,17.7% |
| 2014,18.6% |
| 2013,16.6% |
| 2012,17.7%",7 |
| "DatabaseCharacteristic,Market share |
| Application,52.3% |
| Infrastructure software,17.7% |
| SaaS,11.9% |
| OS,6.6% |
| Custom,5.8% |
| Database,4.1% |
| Analytics,1.5%",Analytics |
| "75.3Characteristic,Market share |
| Application,52.3% |
| Infrastructure software,17.7% |
| Saas,11.9% |
| OS,6.6% |
| Custom,5.8% |
| Database,4.1% |
| Analytics,1.5%",70 |
| "25Characteristic,Share of respondents |
| Holidays in the UK,33% |
| A more extended period of time off (e.g. a week or more) spent at home,26% |
| The occasional day off spent at home,23% |
| My employer has increased the number of days we can carry over to next year,11% |
| I expect to use less of my holiday allowance and will those days,9% |
| Other,3% |
| Don't know,25% |
| |
| Holidays in the UK,33% |
| ""a more extended period of time off (e.g. a week or more) spent at home"",26% |
| The occasional day off spent at home,23% |
| My employer has increased the number of days we can carry over to next year,11% |
| I expect to use less of my holiday allowance and will those days,9% |
| Other,3% |
| Don't know,25%",23 |
| "27.95Characteristic,0-14 years,15-64 years,65 years + |
| 2019,14.58%,65.78%,19.65% |
| 2018,14.67%,65.95%,19.38% |
| 2017,14.7%,66.15%,19.15% |
| 2016,14.77%,66.32%,18.91% |
| 2015,14.91%,66.45%,18.65% |
| 2014,14.91%,66.78%,18.32% |
| 2013,14.94%,67.08%,17.98% |
| 2012,14.98%,67.38%,17.64% |
| 2011,14.94%,67.73%,17.33% |
| 2010,14.79%,68.15",15.75 |
| "2012Characteristic,0-14 years,15-64 years,65 years + |
| 2019,14.58%,65.78%,19.65% |
| 2018,14.67%,65.95%,19.38% |
| 2017,14.7%,66.15%,19.15% |
| 2016,14.77%,66.32%,18.91% |
| 2015,14.91%,66.45%,18.65% |
| 2014,14.91%,66.78%,18.32% |
| 2013,14.94%,67.08%,17.98% |
| 2012,14.98%,67.38%,17.64% |
| 2011,14.94%,67.73%,17.33% |
| 2010,14.79%,68.15%,",2019 |
| "64.22Characteristic,Agriculture,Industry,Services |
| 2019,0.73%,46.16%,53.11% |
| 2018,0.74%,47.03%,52.25% |
| 2017,0.77%,42.57%,56.65% |
| 2016,0.78%,41.45%,57.78% |
| 2015,0.74%,43.89%,55.37% |
| 2014,0.64%,52.76%,46.6% |
| 2013,0.54%,55.01%,44.35% |
| 2012,0.64%,57.45%,41.91% |
| 2011,0.67%,58.04%,41.29% |
| 2010,0.76%,52.53%,46.71% |
| 2009,1.04%,52.0",55.01 |
| "5.05Characteristic,Agriculture,Industry,Services |
| 2019,0.73%,46.16%,53.11% |
| 2018,0.74%,47.03%,52.25% |
| 2017,0.77%,42.57%,56.65% |
| 2016,0.78%,41.45%,57.78% |
| 2015,0.74%,43.89%,55.37% |
| 2014,0.64%,52.76%,46.6% |
| 2013,0.54%,55.01%,44.35% |
| 2012,0.64%,57.45%,41.91% |
| 2011,0.67%,58.04%,41.29% |
| 2010,0.76%,52.53%,46.71% |
| 2009,1.04%,52.04",16.59 |
| "856.36Characteristic,1910,2010 |
| Global North,502.9%,856.36% |
| Global South,108.91%,1327.7% |
| World Total,611.81%,2184.06%",856.36 |
| "2010Characteristic,1910,2010 |
| Global North,502.9%,856.36% |
| Global South,108.91%,1327.7% |
| World Total,611.81%,2184.06%",2010 |
| "Too manyCharacteristic,Too many,Not enough,Just the right number,Don't know |
| Oct '19,30%,63%,30%,- |
| Oct '18,31%,63%,3%,- |
| Oct '17,34%,60%,3%,- |
| Oct '16,29%,63%,4%,- |
| Oct '15,30%,64%,4%,- |
| Oct '14,30%,63%,4%,- |
| Oct '13,30%,63%,4%,- |
| Oct '12,26%,66%,5%,- |
| Nov '11,24%,68%,5%,- |
| Sep '10,30%,63%,5%,- |
| Sep '09,31%,62%,5%,- |
| Sep '08,30%,64%,4%,- |
| Sep '07,32%,62%,5%,- |
| Sep '06,36%,58%,4%,- |
| Oct '05,36%,58%,4%,- |
| Oct '04,30%,53 |
| |
| Oct '19,30%,63%,63%,- |
| Oct '18,31%,63%,63%,- |
| Oct '17,34%,60%,60%,- |
| Oct '16,29%,63%,63%,- |
| Oct '15,30%,64%,64%,- |
| Oct '14,30%,63%,63%,- |
| Oct '13,30%,63%,63%,- |
| Nov '12,26%,66%,66%,- |
| Nov '11,24%,68%,68%,- |
| Sep '10,30%,63%,63%,- |
| Sep '09,31%,62%,62%,- |
| Sep '08,30%,64%,64%,- |
| Sep '07,30%,62%,62%,- |
| Sep '06,36%,58%,58%,- |
| Oct '05,36%,58%,5",63 |
| "6Characteristic,Freelancers,U.S. workers overall |
| White,62%,66% |
| Hispanic or Latino,16%,15% |
| African or African descent,12%,10% |
| Asian-American/Asian,5%,5% |
| All others,4%,3%",5 |
| "33Characteristic,Freelancers,U.S. workers overall |
| White,62%,66% |
| Hispanic or Latino,16%,15% |
| African or African descent,12%,10% |
| Asian- American/Asian,5%,5% |
| All others,4%,3%",37 |
| "WhatsAppCharacteristic,Finland,Norway,Sweden,Denmark |
| Facebook Messenger,23%,51%,44%,43% |
| WhatsApp,12%,64%,16%,6% |
| iMessage,5%,24%,28%,21%",WhatsApp |
| "33Characteristic,Finland,Norway,Sweden,Denmark |
| Facebook Messenger,23%,51%,44%,43% |
| WhatsApp,12%,64%,16%,6% |
| iMessage,5%,24%,28%,21%",78 |
| "[2017, 2023]Characteristic,2017,2023 |
| Digestive health,73%,62.8% |
| Immune health,13.9%,25% |
| Women's health,7%,6.9% |
| Oral health,1.5%,1.2% |
| Others,4.6%,4.2%","[2017, 2023] |
| |
| Digestive health,73%,62.8% |
| Immune health,13.9%,25% |
| Women's health,7%,6.9% |
| Oral health,1.5%,1.2% |
| Others,4.6%,4.2%",Digestive health |
| "78Characteristic,15-24,25-44,45-64,65-74,75+ |
| ""Fracture of lower leg and ankle"",30,56,94,21,31 |
| ""Fracture of ribs, sternum and thoracic spine"",22,55,108,51,62 |
| ""Fracture of forearm"",31,60,75,24,13 |
| ""Fracture of shoulder and upper arm"",32,58,69,1013,- |
| ""Fracture of lumbar spine and pelvis"",30,48,69,19,25 |
| ""Fracture of femur"",15,32,47,25,56 |
| ""Other and unspecified injuries of head"",19,37,24,20,13 |
| ""Open wound on head"",32,43,39,11,17 |
| ""Intracranial injury"",26,35,15,18,-",108 |
| "32.83Characteristic,15-24,25-44,45-64,65-74,75+ |
| ""Fracture of lower leg and ankle"",30,56,94,21,31 |
| ""Fracture of ribs, sternum and thoracic spine"",22,55,108,51,62 |
| ""Fracture of forearm"",31,60,75,24,13 |
| ""Fracture of shoulder and upper arm"",32,58,69,1013,0 |
| ""Fracture of lumbar spine and pelvis"",30,48,69,19,25 |
| ""Fracture of femur"",15,32,47,25,56 |
| ""Other and unspecified injuries of head"",19,37,24,20,13 |
| ""Open wound on head"",32,43,39,11,17 |
| ""Intracranial injury"",26,35,35,15,18",70 |
| "94Characteristic,Women,Men,Both sexes |
| 25 to 34,95%,93%,94% |
| 35 to 44,95%,93%,94% |
| 45 to 54,93%,91%,92% |
| 55 to 64,89%,86%,87% |
| 25 to 64,93%,91%,92%",91 |
| "YesCharacteristic,Women,Men,Both sexes |
| 25 to 34,95%,93%,94% |
| 35 to 44,95%,93%,94% |
| 45 to 54,93%,91%,92% |
| 55 to 64,89%,86%,87% |
| 25 to 64,93%,91%,92%",No |
| "2010Characteristic,2G,3G,4G,5G |
| 2024*,40,25,540 |
| 2023*,40,25,585 |
| 2022*,50,50,625 |
| 2021**,75,55,650 |
| 2020*,110,60,645 |
| 2019*,110,70,155 |
| 2018*,85,70,190 |
| 2017,110,85,225 |
| 2016,135,110,280 |
| 2015,175,135,345 |
| 2014,240,175,400 |
| 2013,300,240,435 |
| 2012,350,300,435 |
| 2011,390,350,395 |
| 2010,420,390,",2010 |
| "89Characteristic,2G,3G,4G,5G |
| 2024*,25,40,40,540 |
| 2023*,40,40,40,585 |
| 2022*,50,50,50,625 |
| 2021**,75,55,55,650 |
| 2020*,60,60,60,645 |
| 2019*,70,60,70,155 |
| 2018*,85,70,85,190 |
| 2017,110,85,110,225 |
| 2016,135,110,135,280 |
| 2015,175,135,175,345 |
| 2014,240,175,240,400 |
| 2013,300,240,300,435 |
| 2012,350,3",92.02 |
| "2005-2006Characteristic,Total,Principal diagnosis,Secondary diagnosis |
| 2008-2009,29533,5587,23946 |
| 2007-2008,30754,7290,23464 |
| 2005-2006,28155,6012,22103 |
| 1999-2000,23807,5689,17118",2007-2008 |
| "30462Characteristic,Total,Principal diagnosis,Secondary diagnosis |
| 2008-2009,29533,5587,23946 |
| 2007-2008,30754,7290,23464 |
| 2005-2006,28155,6012,22103 |
| 1999-2000,23807,5689,17118",112249 |
| "1036Characteristic,Narrowbody,Widebody |
| 2022,1029,155 |
| 2021,1036,204 |
| 2020,1024,216 |
| 2019,1125,312 |
| 2018,934,310",1125 |
| "1412.5Characteristic,Narrowbody,Widebody |
| 2022,1029,155 |
| 2021,1036,204 |
| 2020,1024,216 |
| 2019,1125,312 |
| 2018,934,310",239.4 |
| "FacebookCharacteristic,Active duty,General population |
| Instagram,9.0,6.2 |
| Facebook,8.8,6.8 |
| Youtube,8.6,4.7 |
| Snapchat,8.1,5.8 |
| TikTok,7.5,5.3",Facebook |
| "7.2Characteristic,Active duty,General population |
| Instagram,9.0,6.2 |
| Facebook,8.8,6.8 |
| Youtube,8.6,4.7 |
| Snapchat,8.1,5.8 |
| TikTok,7.5,5.3",5.76 |
| "2011Characteristic,female,male |
| 2019,77.84,71.65 |
| 2018,77.67,71.58 |
| 2017,77.45,71.53 |
| 2016,77.2,71.5 |
| 2015,76.9,71.42 |
| 2014,76.54,71.27 |
| 2013,76.13,71.01 |
| 2012,75.68,70.64 |
| 2011,75.22,70.15 |
| 2010,74.74,69.59 |
| 2009,74.29,69.01",2019 |
| "0.335Characteristic,female,male |
| 2019,77.84,71.65 |
| 2018,77.67,71.58 |
| 2017,77.45,71.53 |
| 2016,77.2,71.5 |
| 2015,76.9,71.42 |
| 2014,76.54,71.27 |
| 2013,76.13,71.01 |
| 2012,75.68,70.64 |
| 2011,75.22,70.15 |
| 2010,74.74,69.59 |
| 2009,74.29,69.01",7.53 |
| "59Characteristic,Share of the whole sample,Share of those informed about the conflict** |
| Yes, it could,21%,25% |
| No, it could not,27%,31% |
| Difficult to answer,4%,4%",58 |
| "47Characteristic,Share of the whole sample,Share of those informed about the conflict** |
| ""Yes, it could"",21%,25% |
| ""No, it could not"",27%,31% |
| Difficult to answer,4%,4%",No |
| "4Characteristic,High-income,Middle-income,Low-income |
| Data not reported,3,1,0 |
| Equal or less than 25% of retail price is tax,3,13,8 |
| 26-50% of retail price is tax,5,38,18 |
| 51-75% of retail prices is tax,24,35,3 |
| More than 75% of retail price is tax,23,14,1",5 |
| "High-incomeCharacteristic,High-income,Middle-income,Low-income |
| Data not reported,3,1,4 |
| Equal or less than 25% of retail price is tax,3,13,8 |
| 26-50% of retail price is tax,5,38,18 |
| 51-75% of retail prices is tax,24,35,3 |
| More than 75% of retail price is tax,23,14,1",Data not reported |
| "100-500 eurosCharacteristic,Less than 50 euros,50 - 100 euros,100 - 500 euros,500 - 1,000 euros,1,000 euros or more,Don't know |
| 2015,8.7%,14.1%,20.9%,5.5%,3.4%,1.4%,0% |
| 2016,8.4%,13.7%,23%,5.7%,4.1%,2.2%,0% |
| 2017,8.1%,14.7%,25.2%,7.1%,4.8%,2.2%,0% |
| 2018,8.6%,14%,25.3%,7.2%,5.8%,3%,0% |
| 2019,8.4%,14.2%,25.6%,5.1%,3.4%,7.2%,0% |
| |
| 2019,3.4%,5.1%,14.2%,25.6%,7.2%,8.4%,- |
| 2018,3%,5.8%,14%,25.3%,7.2%,8.6%,- |
| 2017,2.2%,4.8%,14.7%,25.2%,7.1%,8.1%,- |
| 2016,2.2%,4.1%,13.7%,23%,5.7%,8.4%,- |
| 2015,3.4%,5.5%,1.4%,20.9%,14.1%,8.7%,- |
| |
| 2020,110,19,24,19 |
| 2018,107,19,24,19 |
| 2016,105,18,23,41 |
| 2014,101,23,29,41 |
| 2012,99,19,36,31 |
| 2010,103,15,37,29 |
| 2005,109,16,16,32 |
| 2003,112,15,16,30","Insured all year, not underinsured |
| |
| 2003,112,1516,30,-,-,-,- |
| 2005,109,1616,32,-,-,-,- |
| 2010,103,29,15,-,-,-,- |
| 2012,99,29,19,36,-,-,- |
| 2014,101,31,23,29,-,-,- |
| 2016,105,18,23,41,-,-,- |
| 2018,107,19,24,44,-,-,- |
| 2020,110,19,24,41,-,-,- |
| |
| Democrat,42%,24%,8%,22%,- |
| Republican,11%,20%,18%,46%,- |
| Indepedent,19%,23%,13%,22%,23% |
| Other,11%,20%,23%,36%,- |
| Not sure,6%,13%,15%,8%,58% |
| |
| Democrat,42%,24%,8%,22%,- |
| Republican,5%,11%,20%,18%,46% |
| Indepedent,19%,13%,22%,23%,20% |
| Other,11%,20%,23%,36%,10% |
| Not sure,6%,13%,15%,8%,58% |
| |
| 2020,15.4%,16.4%,12.3%,10.8%,6.2%,38.8% |
| 2019,21.6%,19.4%,14.8%,14.2%,6.9%,23.1% |
| 2018,18%,19.2%,15.6%,15.4%,6.2%,25.8% |
| |
| 2020,15.4%,16.4%,12.3%,10.8%,6.2%,38.8% |
| 2019,21.6%,19.4%,14.8%,14.2%,6.9%,23.1% |
| 2018,18%,19.2%,15.6%,15.4%,6.2%,25.8% |
| |
| Residential property: owner occupied & social housing,3831,4068,4460,4805 |
| Residential property: privately rented,929,839,1102,1015 |
| Infrastructure,960,1061,1102,1015 |
| Commercial property,683,787,883,871 |
| Other non-domestic buildings,127,146,163,147 |
| |
| Residential property: owner occupied & social housing,4805,4068,3831,- |
| Residential property: privately rented,110,1015,929,839 |
| Infrastructure,960,1061,1102,- |
| Commercial property,787,683,871,883 |
| Other non-domestic buildings,127,146,163,147 |
| |
| Immediately,20%,18% |
| Within an hour,24%,28% |
| Sometimes that day,31%,37% |
| I don't expect a response,25%,17%",20 |
| "40Characteristic,United States,Global average |
| Immediately,20%,18% |
| Within an hour,24%,28% |
| Sometime that day,31%,37% |
| I don't expect a response,25%,17% |
| |
| All respondents,41%,34%,25% |
| Democrats,65%,17%,19% |
| Republicans,24%,54%,22% |
| |
| All respondents,41%,34%,25% |
| Democrats,65%,17%,19% |
| Republicans,24%,54%,22% |
| |
| 2019*,107.2,61.4,41.3,42.9,29.0,0 |
| 2014,105.4,91.9,53.9,25.8,32.1,25.6 |
| |
| 2019*,107.2,107.8,61.4,41.3,42.9,29 |
| 2014,105.4,91.9,53.9,32.1,25.8,25.6 |
| |
| Argentina,58%,28%,15% |
| Chile,30%,31%,39% |
| Mexico,26%,37%,37% |
| Colombia,25%,31%,44% |
| Peru,20%,39%,41% |
| Brazil,18%,25%,57% |
| |
| Brazil,18%,25%,57% |
| Peru,20%,39%,41% |
| Colombia,25%,31%,44% |
| Mexico,26%,37%,37% |
| Chile,30%,31%,39% |
| Argentina,58%,28%,15% |
| |
| 2021,1017.2,1992.4,933.7 |
| 2020,1041.0,1659.9,1006.7 |
| 2019,3202.9,1585.1,1048.7 |
| 2018,3231.0,-,- |
| 2017,3795.0,882.9,933.7 |
| 2016,561.8,893.5,1561.8 |
| 2015,4645.7,915.5,- |
| 2014,4983.0,887.0,- |
| 2013,4700.0,912.0,1447 |
| 2012,4865.1,970.0,1486.5 |
| 2011,3819.2,662. |
| |
| 2021,1488.5,622.2,1002.0 |
| 2020,1170.0,302.9,1066.0 |
| 2019,1041.0,232.3,1026.0 |
| 2018,1585.0,933.7,874.0 |
| 2017,1678.1,882.9,964.0 |
| 2016,1561.8,959.5,852.6 |
| 2015,1620.0,915.5,718.0 |
| 2014,1580.0,887.0,689.0 |
| 2013,1447.0,912.0,552.0 |
| 2012,1486.5,, |
| |
| White,37%,58% |
| Black,88%,8% |
| Latino,65%,29% |
| Asian,65%,29% |
| Other race,56%,37% |
| |
| White,37%,58% |
| Black,88%,8% |
| Latino,65%,29% |
| Asian,65%,29% |
| Other race,56%,37% |
| |
| 2020,2097,144 |
| 2019,2106,137 |
| 2018,2100,137 |
| 2017,1975,276 |
| 2016,1838,417 |
| 2015,1836,413 |
| 2014,1819,431 |
| 2013,1786,465 |
| 2012,1703,547 |
| 2011,1592,629 |
| |
| 2020,2097,144 |
| 2019,2106,137 |
| 2018,2100,137 |
| 2017,1975,276 |
| 2016,1838,417 |
| 2015,1836,413 |
| 2014,1819,431 |
| 2013,1786,465 |
| 2012,1703,547 |
| 2011,1592,629 |
| |
| 2020,47,32,113,- |
| 2019,46,43,31,102 |
| 2018,43,34,26,91 |
| 2017,47,29,30,78 |
| 2016,37,25,27,70 |
| 2015,35,21,25,61 |
| 2014,33,21,22,52 |
| 2013,31,21,17,46 |
| |
| 2020,47,32,113,- |
| 2019,46,43,31,102 |
| 2018,43,34,26,91 |
| 2017,47,29,30,78 |
| 2016,37,25,27,70 |
| 2015,35,21,25,61 |
| 2014,33,22,21,52 |
| 2013,31,21,17,46 |
| |
| Display advertising including programmatic,26%,31%,10%,33% |
| Online PR and outreach,28%,37%,15%,20% |
| Website personalization,18%,26%,16%,40% |
| ""Socia media (paid ads)"",24%,36%,17%,23% |
| Social media (organic),33%,39%,20%,8% |
| Paid search marketing (AdWords),19%,37%,20%,24% |
| E-mail marketing and marketing automation,17%,43%,30%,10% |
| Content marketing,17%,40%,30%,13% |
| SEO,15%,41%,32%,12% |
| |
| SEO,15%,41%,32%,12% |
| Content marketing,17%,40%,30%,13% |
| E-mail marketing and marketing automation,17%,43%,30%,10% |
| Paid search marketing (AdWords),19%,37%,20%,24% |
| Social media (organic),33%,39%,20%,8% |
| ""Socia media (paid ads)"",24%,36%,17%,23% |
| Website personalization,18%,26%,16%,40% |
| Online PR and outreach,28%,37%,15%,20% |
| Display advertising including programmatic,26%,31%,10%,33% |
| |
| Ted Baker,60%,60% |
| Boohoo,58%,55% |
| Inditex,58%,57% |
| H&M,57%,55% |
| M&S,55%,56% |
| ASOS,50%,50% |
| Zalando,45%,45% |
| |
| Ted Baker,60%,60% |
| Boohoo,58%,55% |
| Inditex,58%,57% |
| H&M,57%,55% |
| M&S,55%,56% |
| ASOS,50%,50% |
| Zalando,45%,45% |
| |
| 2015*,12721,12887,6014 |
| 2014*,12140,12173,5736 |
| 2013*,11607,11514,5461 |
| 2012*,11120,10942,5233 |
| 2011*,10636,10399,4997 |
| 2010,10168,9807,4770 |
| 2009,9037,9248,4241 |
| 2008,9526,10129,4493 |
| 2007,9461,10119,4368 |
| 2006,8703,9127,4158 |
| |
| 2015*,12721,12887,6014 |
| 2014*,12140,12173,5736 |
| 2013*,11607,11514,5461 |
| 2012*,11120,10942,5233 |
| 2011*,10636,10399,4997 |
| 2010,10168,9807,4770 |
| 2009,9037,9248,4241 |
| 2008,9526,10129,4493 |
| 2007,9461,10119,4368 |
| 2006,8703,9127,4158 |
| |
| 2018/19,35283,9650 |
| 2017/18,35060,9609 |
| 2016/17,35210,9599 |
| 2015/16,35155,9514 |
| 2014/15,35875,9418 |
| 2013/14,35393,9150 |
| 2012/13,35198,9447 |
| 2011/12,35732,8833 |
| 2010/11,36912,9022 |
| 2009/10,36475,8254 |
| |
| 2018/19,35283,9650 |
| 2017/18,35060,9609 |
| 2016/17,35210,9599 |
| 2015/16,35155,9514 |
| 2014/15,35875,9418 |
| 2013/14,35393,9150 |
| 2012/13,35198,9447 |
| 2011/12,35732,8833 |
| 2010/11,36912,9022 |
| 2009/10,36475,8254 |
| |
| ""Pirates of the Caribbean: Dead Man's Chest"",423.32,1066.2 |
| ""Pirates of the Caribbean: At World's End"",309.42,963.4 |
| ""Pirates of the Caribbean: The Curse of the Black Pearl"",305.41,654.3 |
| ""Pirates of the Caribbean: On Stranger Tides"",241.07,1045.7 |
| ""Pirates of the Caribbean: Dead Men Tell No Tales"",172.56,794.9 |
| |
| ""Pirates of the Caribbean: Dead Man's Chest"",423.32,1066.2 |
| ""Pirates of the Caribbean: At World's End"",309.42,963.4 |
| ""Pirates of the Caribbean: The Curse of the Black Pearl"",305.41,654.3 |
| ""Pirates of the Caribbean: On Stranger Tides"",241.07,1045.7 |
| ""Pirates of the Caribbean: Dead Men Tell No Tales"",172.56,794.9 |
| |
| 2017,99%,76%,44%,- |
| 2018,99%,80%,52%,- |
| 2019,99%,80%,57%,- |
| 2020,96%,86%,63%,- |
| |
| 2020,96%,86%,96%,63% |
| 2019,99%,94%,99%,57% |
| 2018,99%,92%,92%,52% |
| 2017,99%,92%,76%,44% |
| """The Real World, Keeping up with the Kardashians, The Hills, etc." |
| ""Documentaries / docu-series (e.g., The Real World, Keeping up with the Kardashians, The Hills, etc.)"",18%,26% |
| ""Competition / elimination (e.g., Dancing with the Stars, America's Got Talent, etc.)"",34%,20% |
| ""Makeover / renovation (e.g., Extreme Makeover, What Not to Wear, etc.)"",24%,10% |
| ""Dating (e.g., The Bachelor / Bachelorette, etc.)"",8%,11% |
| ""Hidden camera / amateur content (e.g., Impractical Jokers, America's Funniest Home Videos, etc.)"",17%,8% |
| ""Supernatural (e.g., Ghost Hunters, Paranormal State, etc.)"",18%,17% |
| ""Travel / aspirational (e.g., Lifestyles of the Rich and Famous, MTV Cribs, etc.)"",13%,14% |
| ""Cooking (e.g., MasterChef, Chopped, etc.)"",41%,29% |
| Other,1","Cooking (e.g., MasterChef, Chopped, etc.) |
| |
| ""Documentaries / -docu-series (e.g., The Real World, Keeping up with the Kardashians, The Hills, etc.)"",18%,26% |
| ""Competition / elimination (e.g., Dancing with the Stars, America's Got Talent, etc.)"",34%,20% |
| ""Makeover / renovation (e.g., Extreme Makeover, What Not to Wear, etc.)"",24%,10% |
| ""Dating (e.g., The Bachelor / Bachelorette, etc.)"",11%,8% |
| ""Hidden camera / amateur content (e.g., Impractical Jokers, America's Funniest Home Videos, etc.)"",17%,17% |
| ""Supernatural (e.g., Ghost Hunters, Paranormal State, etc.)"",18%,17% |
| ""Travel / aspirational (e.g., Lifestyles of the rich and Famous, MTV Cribs, etc.)"",13%,14% |
| ""Cooking (e.g., MasterChef, Chopped, etc.)"",41%,29% |
| Other,16%,18% |
| ""Don't",39 |
| "YesCharacteristic,Male,Female |
| 2019,71.4%,80.2% |
| 2018,70.8%,79.7% |
| 2017,71.3%,71.4% |
| 2016,71.3%,62.4% |
| 2015,70.3%,62.8% |
| 2014,73.1%,64.7% |
| 2013,73.3%,63.7% |
| 2012,73.3%,65.4% |
| 2011,72.6%,66% |
| 2010,71.7%,65.4% |
| 2009,72.6%,69.3% |
| 2008,69.3%,62.1% |
| 2007,66.8%,60.4% |
| 2006,58.5%,58.4% |
| 2005,65.2%,63.3% |
| 2004,54.9%,5",No |
| "2020Characteristic,Male,Female |
| 2000,61.1%,55% |
| 2001,62.3%,55% |
| 2002,62.4%,53.4% |
| 2003,63.1%,54.9% |
| 2004,63.3%,54.9% |
| 2005,65.2%,57% |
| 2006,58.5%,60.2% |
| 2007,66.8%,62.1% |
| 2008,69.3%,62.3% |
| 2009,70.1%,66.5% |
| 2010,72.6%,65.4% |
| 2011,66%,64.5% |
| 2012,73.3%,65.4% |
| 2013,73.1%,63.7% |
| 2014,73%,63.6% |
| 2015,71.3%,64.7%",2020 |
| "183Characteristic,National sponsoring,Entrance fees and other spectator revenue,Licensing,Other revenue** |
| 2002 Salt Lake City,599,183,34,- |
| 2006 Torino,360,93.43,15.57,342.56 |
| 2010 Vancouver,449.6,205.8,213.9,350 |
| 2014 Sochi*,350,-,129.37,517.69",599 |
| "161.09Characteristic,National sponsoring,Entrance fees and other spectator revenue,Licensing,Other revenue** |
| 2014 Sochi*,350,129.37,517.69,- |
| 2010 Vancouver,44.2,213.9,449.6,- |
| 2006 Torino,15.57,93.43,342.56,- |
| 2002 Salt Lake City,34,183,599,-",479.5 |
| "42%Characteristic,PET plastics collection rate,PET plastics recycling rate,PET bottles collection rate |
| France,44%,56%,21% |
| Germany,76%,36%,94% |
| UK,38%,22%,53% |
| Spain,41%,31%,60% |
| Italy,42%,42%,55%",55 |
| "72Characteristic,PET plastics collection rate,PET plastics recycling rate,PET bottles collection rate |
| France,44%,56%,21% |
| Germany,76%,36%,94% |
| UK,38%,22%,53% |
| Spain,41%,31%,60% |
| Italy,42%,42%,55%",52 |
| "155Characteristic,2010,2011,2012,2013,2014,2015,2016,2017 |
| Q4,150,-,165,155,160,-,-,- |
| Q3,141,-,172,162,-,-,-,- |
| Q2,140,-,175,160,-,-,-,- |
| Q1,132,-,164,151,-,-,-,-",165 |
| "28Characteristic,2010,2011,2012,2013,2014,2015,2016,2017 |
| Q4,150,155,160,165,170,171,172,173 |
| Q3,141,158,162,167,172,172,173,176 |
| Q2,140,160,166,175,181,182,186,190 |
| Q1,132,146,151,164,170,170,178,183",15 |
| "31.6Characteristic,Female,Male |
| Firearms,41.9%,69.4% |
| Poisoning,31.6%,8.5% |
| Suffocation,20.3%,16.9% |
| Other,6.2%,5.2%",8.5 |
| "4.5Characteristic,Female,Male |
| Firearms,41.9%,69.4% |
| Poisoning,31.6%,8.5% |
| Suffocation,20.3%,16.9% |
| Other,6.2%,5.2%",27.5 |
| "Bill MaherCharacteristic,Very favorable,Somewhat favorable,Somewhat unfavorable,Heard of,no opinion,Never heard of |
| Jimmy Fallon,29%,8%,10%,1%,5%,1% |
| Jimmy Kimmel,26%,30%,12%,1%,5%,1% |
| Stephen Colbert,23%,21%,14%,9%,5%,2% |
| James Corden,19%,21%,20%,6%,5%,2% |
| Conan O'Brien,18%,30%,11%,6%,11%,7% |
| Trevor Noah,16%,7%,8%,8%,37%,2% |
| Seth Meyers,14%,26%,8%,8%,26%,1% |
| Bill Maher,12%,17%,16%,8%,27%,2% |
| John Oliver,12%,14%,5%,6%,21%,4% |
| Carson Daly,10%,26%,9%,6%,31%,18% |
| |
| Jimmy Fallon,29%,8%,10%,5%,10%,18% |
| Jimmy Kimmel,26%,30%,12%,19%,19%,5% |
| Stephen Colbert,23%,21%,14%,19%,9%,13% |
| James Corden,21%,20%,11%,5%,29%,23% |
| Conan O'Brien,18%,30%,11%,6%,23%,7% |
| Trevor Noah,16%,14%,8%,7%,18%,37% |
| Seth Meyers,14%,26%,8%,5%,26%,17% |
| Bill Maher,12%,17%,8%,27%,16%,20% |
| John Oliver,12%,14%,5%,21%,41%,6% |
| Carson Daly,10%,26%,9%,31%,18%,18%",19 |
| "113702Characteristic,Boys,Girls |
| 2018/19,113702,99750 |
| 2017/18,113313,96904 |
| 2016/17,111842,93473 |
| 2015/16,109522,88050 |
| 2014/15,108450,84785 |
| 2013/14,106720,81969 |
| 2012/13,101687,77258 |
| 2011/12,100641,74993 |
| 2010/11,95683,74927 |
| 2009/10,90670,68768",99750 |
| "32145Characteristic,Boys,Girls |
| 2018/19,113702,99750 |
| 2017/18,113313,96904 |
| 2016/17,111842,93473 |
| 2015/16,109522,88050 |
| 2014/15,108450,84785 |
| 2013/14,106720,81969 |
| 2012/13,101687,77258 |
| 2011/12,100641,74993 |
| 2010/11,95683,74927 |
| 2009/10,90670,68768",18019 |
| "85Characteristic,2013,2016 |
| Air,85%,65% |
| Trucking,-,10% |
| Ocean,-,5%",85 |
| "50Characteristic,2013,2016 |
| Air,85%,65% |
| Trucking,10%,10% |
| Ocean,5%,25%",60 |
| "12.2Characteristic,Consumables,Seasonal,Home products,Apparel |
| 2020,76.8%,6.5%,12.1%,4.6% |
| 2019,78%,5.8%,11.7%,4.5% |
| 2018,77.5%,5.9%,11.9%,4.7% |
| 2017,76.4%,6%,12.1%,5% |
| 2016,76.4%,6.2%,12.2%,5.2% |
| 2015,75.9%,6.3%,12.4%,5.4% |
| 2014,75.7%,6.4%,12.4%,5.5% |
| 2013,75.2%,6.4%,12.9%,5.5% |
| 2012,73.9%,6.6%,13.6%,5.9% |
| 2011,73.2%,6.8%,13.8%,6.2% |
| 2010",6.2 |
| "4.3Characteristic,Consumables,Seasonal,Home products,Apparel |
| 2020,76.8%,6.5%,12.1%,4.6% |
| 2019,78%,5.8%,11.7%,4.5% |
| 2018,77.5%,5.9%,11.9%,4.7% |
| 2017,76.7%,6%,12.1%,5% |
| 2016,76.4%,6.2%,12.2%,5.2% |
| 2015,75.9%,6.3%,12.4%,5.4% |
| 2014,75.7%,6.4%,12.4%,5.5% |
| 2013,75.2%,6.4%,12.9%,5.5% |
| 2012,73.9%,6.6%,13.6%,5.9% |
| 2011,73.2%,6.8%,13.8%,6.2% |
| 2010,",5.45 |
| "69Characteristic,Obama,Romney |
| White (non-Hispanic),37%,59% |
| Nonwhite,79%,15% |
| Black,90%,5% |
| Hispanic,69%,25%",69 |
| "45Characteristic,Obama,Romney |
| White (non-Hispanic),37%,59% |
| Nonwhite,79%,15% |
| Black,90%,5% |
| Hispanic,69%,25%",85 |
| "89Characteristic,Offline sales,Online sales |
| 2013,93.2%,6.8% |
| 2018*,89%,11%",11 |
| "92.6Characteristic,Offline sales,Online sales |
| 2013,93.2%,6.8% |
| 2018*,89%,11%",91.1 |
| "19.81Characteristic,0-14 years,15-64 years,65 years and older |
| 2019,19.57%,64.44%,15.99% |
| 2018,19.65%,64.69%,15.65% |
| 2017,19.72%,64.95%,15.33% |
| 2016,19.81%,65.19%,15% |
| 2015,19.97%,65.38%,14.65% |
| 2014,20.1%,65.6%,14.3% |
| 2013,20.26%,65.8%,13.94% |
| 2012,20.4%,66%,13.59% |
| 2011,20.5%,66.21%,13.29% |
| 2010,20.45%,66.45%,13.05% |
| 20",19.81 |
| "5.11Characteristic,0-14 years,15-64 years,65 years and older |
| 2019,19.57%,64.44%,15.99% |
| 2018,19.65%,64.69%,15.65% |
| 2017,19.72%,64.95%,15.33% |
| 2016,19.81%,65.19%,15% |
| 2015,19.97%,65.38%,14.65% |
| 2014,20.1%,65.6%,14.3% |
| 2013,20.26%,65.8%,13.94% |
| 2012,20.4%,66%,13.59% |
| 2011,20.5%,66.21%,13.29% |
| 2010,20.45%,66.45%,13.05% |
| 200",45.83 |
| "33Characteristic,Domestic market,Total market |
| 2019,23,28 |
| 2018,30,25 |
| 2017,30,24 |
| 2016,27,33 |
| 2015,30,33 |
| 2014,24,24 |
| 2013,30,36 |
| 2012,32,25 |
| 2011,27,32",30 |
| "80Characteristic,Domestic market,Total market |
| 2019,23,28 |
| 2018,30,25 |
| 2017,30,24 |
| 2016,27,33 |
| 2015,33,30 |
| 2014,24,24 |
| 2013,30,36 |
| 2012,32,25 |
| 2011,27,32",66 |
| "30.1Characteristic,Men,Women |
| 1998,25.1,26.7 |
| 1999,25.1,26.9 |
| 2000,25.1,26.8 |
| 2001,25.1,26.9 |
| 2002,25.3,26.9 |
| 2003,25.3,26.9 |
| 2004,25.3,27.1 |
| 2005,25.3,27.1 |
| 2006,25.5,27.5 |
| 2007,25.6,27.6 |
| 2008,25.9,27.6 |
| 2009,25.9,28.1 |
| 2010,26.1,28.2 |
| 2011,26.4,28.6 |
| 2012,26.6,29.0 |
| 2013,26.6,29.2 |
| 2014,2",28.3 |
| "24.2Characteristic,Men,Women |
| 2019,30.1,- |
| 2018,28.3,- |
| 2017,29.9,28.1 |
| 2016,29.2,27.9 |
| 2015,29.3,27.1 |
| 2014,29.2,- |
| 2013,29.0,26.6 |
| 2012,28.6,26.6 |
| 2011,28.4,26.4 |
| 2010,28.2,26.1 |
| 2009,28.1,25.9 |
| 2008,27.6,25.9 |
| 2007,27.5,25.6 |
| 2006,27.5,25.5 |
| 2005,27.1,25.3 |
| 2004,27.4,25.3 |
| 2003,27.1,25.3 |
| 200",10 |
| "63Characteristic,Minimum strikes,Maximum strikes |
| 2020*,12,12 |
| 2019,63,63 |
| 2018,45,45 |
| 2017,35,35 |
| 2016,14,14 |
| 2015,11,11 |
| 2014,3,3 |
| 2013,1,1 |
| 2012,2,2 |
| 2011,1,4",63 |
| "59Characteristic,Minimum strikes,Maximum strikes |
| 2020*,12,12 |
| 2019,63,63 |
| 2018,45,45 |
| 2017,35,35 |
| 2016,14,14 |
| 2015,11,11 |
| 2014,3,3 |
| 2013,1,1 |
| 2012,2,2 |
| 2011,1,4",28 |
| "-59Characteristic,Cloud traffic,Non-cloud traffic |
| 2019*,90%,10% |
| 2018*,88%,12% |
| 2017*,86%,14% |
| 2016*,85%,15% |
| 2015*,83%,17% |
| 2014,81%,19%",62 |
| "4Characteristic,Cloud traffic,Non-cloud traffic |
| 2019*,90%,10% |
| 2018*,88%,12% |
| 2017*,86%,14% |
| 2016*,85%,15% |
| 2015*,83%,17% |
| 2014,81%,19%",72 |
| "[2014, 2015]Characteristic,Domestic market,Total market |
| 2018,315,280 |
| 2017,347,311 |
| 2016,289,295 |
| 2015,305,300 |
| 2014,275,327 |
| 2013,329,329 |
| 2012,337,337 |
| 2011,361,361","[2011, 2012]" |
| "88Characteristic,Domestic market,Total market |
| 2018,315,280 |
| 2017,311,347 |
| 2016,289,295 |
| 2015,305,300 |
| 2014,275,327 |
| 2013,329,329 |
| 2012,337,337 |
| 2011,361,361",35 |
| "Below 100 SEKCharacteristic,2010,2012,2014,2016,2018,2020 |
| Below 100 SEK,59%,55%,41%,26%,20%,12% |
| 100-500 SEK,22%,19%,13%,9%,8%,5% |
| Above 500 SEK,11%,10%,7%,4%,5%,3%",2018 |
| "48Characteristic,2010,2012,2014,2016,2018,2020 |
| Below 100 SEK,59%,55%,41%,26%,20%,12% |
| 100-500 SEK,22%,19%,13%,9%,8%,5% |
| Above 500 SEK,11%,10%,7%,4%,5%,3%",47 |
| "3.7Characteristic,Apparel,Socks,Arms/legs sleeves |
| 2010,4.8,1.2,2.3 |
| 2009,3.7,0.51,1.2 |
| 2008,2.7,0.17,0.27",3.7 |
| "2010Characteristic,Apparel,Socks,Arms/legs sleeves |
| 2010,4.8,1.2,2.3 |
| 2009,3.7,0.51,1.2 |
| 2008,2.7,0.17,0.27",2010 |
| "FemaleCharacteristic,Male,Female |
| 2015,27%,31% |
| 2012,19%,23% |
| 2008,15%,13% |
| 2003,16%,15%",Female |
| "14Characteristic,Male,Female |
| 2015,27%,31% |
| 2012,19%,23% |
| 2008,15%,13% |
| 2003,16%,15%",14 |
| "3.72Characteristic,Travel Solutions,Hospitality Solutions |
| 2019,3.72,0.29 |
| 2020,1.18,0.17",3.72 |
| "1.27Characteristic,Travel Solutions,Hospitality Solutions |
| 2020,1.18,0.17 |
| 2019,3.72,0.29",0.46 |
| "CinematographyCharacteristic,Male,Female |
| ""Cinematography"",100%,0% |
| ""Film Editing"",80%,20% |
| ""Writing (adapted screenplay)"",71%,29% |
| ""Best Picture"",70%,30% |
| ""Best Director"",60%,40% |
| ""Writing (original screenplay)"",60%,40% |
| ""Documentary (short subject)"",60%,40% |
| ""Documentary (feature)"",46%,54%",Cinematography |
| "53Characteristic,Male,Female |
| ""Cinematography"",100%,0% |
| Film Editing,80%,20% |
| ""Writing (adapted screenplay)"",71%,29% |
| Best Picture,70%,30% |
| Best Director,60%,40% |
| ""Writing (original screenplay)"",60%,40% |
| ""Documentary (short subject)"",60%,40% |
| Documentary (feature),46%,54%",50 |
| "Joe BidenCharacteristic,Joe Biden,Donald Trump |
| Denmark,80%,6% |
| Germany,71%,11% |
| Spain,69%,16% |
| Sweden,65%,18% |
| France,64%,14% |
| Britain,61%,13% |
| Italy,58%,20%",80 |
| "38Characteristic,Joe Biden,Donald Trump |
| Denmark,80%,6% |
| Germany,71%,11% |
| Spain,69%,16% |
| Sweden,65%,18% |
| France,64%,14% |
| Britain,61%,13% |
| Italy,58%,20%",38 |
| "3.9Characteristic,LinkedIn,Facebook,Twitter |
| United States,2.5,1.3,1.3 |
| Canada,3.0,2.0,1.2 |
| Australia,3.4,1.4,1.4 |
| China,3.0,1.3,1.2 |
| India,3.9,1.5,1.3 |
| United Kingdom,2.7,1.1,1.4",3.9 |
| "6.9Characteristic,LinkedIn,Facebook,Twitter |
| United States,2.5,1.3,1.3 |
| Canada,3.0,2.0,1.2 |
| Australia,3.4,1.4,1.4 |
| China,3.0,1.3,1.2 |
| India,3.9,1.5,1.3 |
| United Kingdom,2.7,1.1,1.4",6.7 |
| "1481Characteristic,Over-The-Counter (OTC),Fixed odds betting terminals (FOBTs) |
| 2011,1481,1301.7 |
| 2010,1461.3,1181.9 |
| 2009,1658,1070.4",1461.3 |
| "3227.2Characteristic,Over-The-Counter (OTC),Fixed odds betting terminals (FOBTs) |
| 2011,1481,1301.7 |
| 2010,1461.3,1181.9 |
| 2009,1658,1070.4",2372.1 |
| "MaleCharacteristic,Male,Female |
| ""Purchases made online"",41%,40% |
| ""Shopping on Amazon 6+ times per month"",53%,45% |
| ""Number of Amazon purchases has increased year-over-year"",60%,52%",Male |
| "10Characteristic,Male,Female |
| Purchases made online,41%,40% |
| ""Shopping on Amazon 6+ times per month"",53%,45% |
| ""Number of Amazon purchases has increased year-over-year"",60%,52%",1 |
| "63.47Characteristic,0-14 years,15-64 years,65 years and older |
| 2019,28.88%,63.47%,7.65% |
| 2018,28.46%,64.15%,7.39% |
| 2017,27.91%,64.95%,7.14% |
| 2016,27.31%,65.77%,6.92% |
| 2015,26.7%,66.54%,6.76% |
| 2014,26.04%,67.2%,6.76% |
| 2013,25.41%,67.81%,6.78% |
| 2012,24.86%,68.34%,6.81% |
| 2011,24.41%,68.78%,6.81% |
| 2010,24.05%,69.13%,6.81% |
| 20",7.65 |
| "39.2Characteristic,0-14 years,15-64 years,65 years and older |
| 2019,28.88%,63.47%,7.65% |
| 2018,28.46%,64.15%,7.39% |
| 2017,27.91%,64.95%,7.14% |
| 2016,27.31%,65.77%,6.92% |
| 2015,26.7%,66.54%,6.76% |
| 2014,26.04%,67.2%,6.76% |
| 2013,25.41%,67.81%,6.78% |
| 2012,24.86%,68.34%,6.81% |
| 2011,24.41%,68.78%,6.81% |
| 2010,24.05%,69.13%,6.81% |
| 200",5.66 |
| "23.74Characteristic,Agriculture,Industry,Services |
| 2019,6.1%,23.74%,55.49% |
| 2018,5.89%,24.52%,54.93% |
| 2017,5.6%,23.91%,55.78% |
| 2016,6.37%,23.16%,55.5% |
| 2015,6.24%,22.54%,56.26% |
| 2014,5.95%,22.06%,56.88% |
| 2013,6.84%,22.23%,56.25% |
| 2012,6.14%,21.54%,56.87% |
| 2011,6.76%,22.13%,55.88% |
| 2010,6.8%,22.39%,55.57% |
| 2009,7.08%,22.84%,5",54.93 |
| "86.87Characteristic,Agriculture,Industry,Services |
| 2019,6.1%,23.74%,55.49% |
| 2018,5.89%,24.52%,54.93% |
| 2017,5.6%,23.91%,55.78% |
| 2016,6.37%,23.16%,55.5% |
| 2015,6.24%,22.54%,56.26% |
| 2014,5.95%,22.06%,56.88% |
| 2013,6.84%,22.23%,56.25% |
| 2012,6.14%,21.54%,56.87% |
| 2011,6.76%,22.13%,55.88% |
| 2010,6.8%,22.39%,55.57% |
| 2009,7.08%,22.84%,5",11.99 |
| "MenCharacteristic,Men,Women |
| 75 years and over,11.7,5.7 |
| 65-74 years,20.9,9.3 |
| 55-64 years,19.5,10.0 |
| 45-54 years,17.4,9.6 |
| 35-44 years,13.4,9.0 |
| 25-34 years,12.8,8.3 |
| 16-24 years,12.3,7.1",Men |
| "20.4Characteristic,Men,Women |
| 75 years and over,11.7,5.7 |
| 65-74 years,20.9,9.3 |
| 55-64 years,19.5,10.0 |
| 45-54 years,17.4,9.6 |
| 35-44 years,13.4,9.0 |
| 25-34 years,12.8,8.3 |
| 16-24 years,12.3,7.1",19.4 |
| "53Characteristic,Male,Female |
| More,41%,49% |
| No change,53%,43% |
| Less,2%,2% |
| ""Don't know/no opinion"",4%,6% |
| |
| More,41%,49% |
| No change,53%,43% |
| Less,2%,2% |
| Don't know/no opinion,4%,6%",Less |
| "7Characteristic,Men,Women |
| 75 years and over,6%,6% |
| 65-74 years,9%,11% |
| 55-64 years,15%,15% |
| 45-54 years,20%,12% |
| 35-44 years,21%,16% |
| 25-34 years,28%,22% |
| 16-24 years,23%,19%",16 |
| "6Characteristic,Men,Women |
| 75 years and over,6%,6% |
| 65-74 years,9%,11% |
| 55-64 years,15%,15% |
| 45-54 years,20%,12% |
| 35-44 years,21%,16% |
| 25-34 years,28%,22% |
| 16-24 years,23%,19%",28 |
| "80 to 89 yearsCharacteristic,Male,Female |
| 9 years and younger,1.3,1.2 |
| 10 to 19 years,1.8,2.2 |
| 20 to 29 years,12.9,13.4 |
| 30 to 39 years,12.8,8.7 |
| 40 to 49 years,12.0,6.2 |
| 50 to 59 years,13.2,8.1 |
| 60 to 69 years,9.4,5.0 |
| 70 to 79 years,6.9,4.4 |
| 80 to 89 years,7.6,5.1 |
| 90 years and older,8.3,6.9",20 to 29 years |
| "90 years and olderCharacteristic,Male,Female |
| 9 years and younger,1.3,1.2 |
| 10 to 19 years,1.8,2.2 |
| 20 to 29 years,12.9,13.4 |
| 30 to 39 years,12.8,8.7 |
| 40 to 49 years,12.0,6.2 |
| 50 to 59 years,13.2,8.1 |
| 60 to 69 years,9.4,5.0 |
| 70 to 79 years,6.9,4.4 |
| 80 to 89 years,7.6,5.1 |
| 90 years and older,8.3,6.9",9 years and younger |
| "73.3Characteristic,Male,Female |
| 2002,73.3,20.1 |
| 2012,54.7,16.6 |
| 2016,53.0,17.1",73.3 |
| "47.5Characteristic,Male,Female |
| 2016,53.0,17.1 |
| 2012,54.7,16.6 |
| 2002,73.3,20.1",53.8 |
| "Media workersCharacteristic,Media workers,Motive unconfirmed,Motive confirmed |
| 2021*,3,0,5 |
| 2020,0,32,17 |
| 2019,10,25,26 |
| 2018,8,10,22 |
| 2017,2,8,47 |
| 2016,2,28,51 |
| 2015,3,24,73 |
| 2014,4,11,62 |
| 2013,2,4,74 |
| 2012,2,0,30 |
| 2011,5,2,49 |
| 2010,4,32,44 |
| 2009,3,3,76 |
| 2008,24,20,42 |
| 2007,17,22,57 |
| 2006,120,29,50 |
| 2005,11,11,60 |
| 2004,3,12,42 |
| 2003,7,",Media workers |
| "73Characteristic,Media workers,Motive unconfirmed,Motive confirmed |
| 201*,3,32,5 |
| 2020,0,0,32 |
| 2019,10,25,26 |
| 2018,8,10,56 |
| 2017,2,20,47 |
| 2016,2,28,51 |
| 2015,3,24,73 |
| 2014,4,11,62 |
| 2013,2,24,74 |
| 2012,2,30,0 |
| 2011,5,0,49 |
| 2010,4,32,44 |
| 2009,3,32,76 |
| 2008,24,0,42 |
| 2007,17,20,22 |
| 2006,120,29,57 |
| 2005,11,50,60 |
| 2004,12,0,42 |
| 2003,7",72 |
| "12.82Characteristic,Male,Female |
| 16 to 17,5.0,6.2 |
| 18 to 21,9.21,9.06 |
| 22 to 29,12.99,12.82 |
| 30 to 39,16.25,16.13 |
| 40 to 49,16.29,18.43 |
| 50 to 59,17.04,14.77 |
| 60 and over,14.45,12.53",12.99 |
| "19.06Characteristic,Male,Female |
| 16 to 17,5.0,6.2 |
| 18 to 21,9.21,9.06 |
| 22 to 29,12.99,12.82 |
| 30 to 39,16.25,16.13 |
| 40 to 49,18.43,16.29 |
| 50 to 59,17.04,14.77 |
| 60 and over,14.45,12.53",18.27 |
| """No""Characteristic,Yes,No |
| 16 to 24 years,27%,73% |
| 25 to 34 years,38%,62% |
| 35 to 44 years,35%,65% |
| 45 to 54 years,30%,70% |
| 55 years and over,24%,76%",No |
| "2Characteristic,Yes,No |
| 16 to 24 years,27%,73% |
| 25 to 34 years,38%,62% |
| 35 to 44 years,35%,65% |
| 45 to 54 years,30%,70% |
| 55 years and over,24%,76%",1 |
| "BlueCharacteristic,0-14,15-64,65+ |
| Female,16.65,66.45,9.21 |
| Male,17.06,63.9,8.63",gray |
| "46.95Characteristic,0-14,15-64,65+ |
| Female,16.65,66.45,9.21 |
| Male,17.06,63.9,8.63",2.72 |
| "0.1217Characteristic,2017,2018,2019 |
| Kidney,49.2,47.0,43.9 |
| Liver,18.5,20.7,17.2 |
| Lung,13.3,13.3,11.4 |
| Heart,7.4,7.4,7.6 |
| Pancreas,2.3,2.3,1.7 |
| Small bowel,0.0,0.0,0.1",43.9 |
| "30.7Characteristic,2017,2018,2019 |
| Kidney,49.2,47.0,43.9 |
| Liver,18.5,20.7,17.2 |
| Lung,13.3,13.3,11.4 |
| Heart,7.4,7.4,7.6 |
| Pancreas,2.3,2.3,1.7 |
| Small bowel,0.0,0.0,0.1",38 |
| "2Characteristic,Total,Male,Female |
| Not sure,8%,7%,8% |
| Not at all common,2%,3%,2% |
| Not very common,16%,22%,11% |
| Somewhat common,40%,43%,36% |
| Very common,34%,24%,43%",5 |
| "8.5Characteristic,Total,Male,Female |
| Very common,34%,24%,43% |
| Somewhat common,40%,43%,36% |
| Not very common,16%,22%,11% |
| Not at all common,2%,3%,2% |
| Not sure,8%,7%,8%",5 |
| "21.4Characteristic,2006,2011 |
| Europe,14.6,15.6 |
| North America,7.5,7.9 |
| Asia/Pacific,4.8,6.6 |
| Central & South America,1.2,1.3 |
| Middle East,0.7,0.8 |
| Africa,0.5,0.5",1 |
| "Middle EastCharacteristic,2006,2011 |
| Europe,14.6,15.6 |
| North America,7.5,7.9 |
| ""Asia/Pacific"",4.8,6.6 |
| ""Central & South America"",1.2,1.3 |
| ""Middle East"",0.7,0.8 |
| Africa,0.5,0.5",Africa |
| "18/19Characteristic,Stranger,Acquaintance |
| 18/19,614,459 |
| 17/18,542,629 |
| 16/17,589,548 |
| 15/16,559,604 |
| 14/15,671,660 |
| 13/14,598,664 |
| 12/13,778,777 |
| 11/12,895,832 |
| 10/11,770,756 |
| 09/10,852,732 |
| 08/09,816,721 |
| 07/08,745,852 |
| 06/07,950,896 |
| 05/06,933,879 |
| 04/05,866,893 |
| 03/04,934,941 |
| 02/03,1000,991 |
| 01/",18/19 |
| "160Characteristic,Stranger,Acquaintance |
| 18/19,614,459 |
| 17/18,542,629 |
| 16/17,559,548 |
| 15/16,559,604 |
| 14/15,571,660 |
| 13/14,598,671 |
| 12/13,664,598 |
| 11/12,778,832 |
| 10/11,895,756 |
| 09/10,770,732 |
| 08/09,852,721 |
| 07/08,745,816 |
| 06/07,950,896 |
| 05/06,933,879 |
| 04/05,866,893 |
| 03/04,1000,934 |
| 02/03,991,941 |
| 01/02",991 |
| "80.7Characteristic,female,male |
| 2018,86.3,80.7 |
| 2017,86.1,80.6 |
| 2016,86.3,80.5 |
| 2015,85.7,80.1 |
| 2014,86.2,80.4 |
| 2013,86.1,80.2 |
| 2012,85.5,79.5 |
| 2011,85.6,79.5 |
| 2010,84.7,78.7 |
| 2009,84.6,78.5 |
| 2008,84.3,78.2",80.7 |
| "6.5Characteristic,female,male |
| 2018,86.3,80.7 |
| 2017,86.1,80.6 |
| 2016,86.3,80.5 |
| 2015,85.7,80.1 |
| 2014,86.2,80.4 |
| 2013,86.1,80.2 |
| 2012,85.5,79.5 |
| 2011,85.6,79.5 |
| 2010,84.7,78.7 |
| 2009,84.6,78.5 |
| 2008,84.3,78.2",2 |
| "5Characteristic,Very useful,Useful |
| ""Find and book hotels etc."",22%,31% |
| ""Manage parking lots / car services"",27%,13% |
| Internet TV,21%,7% |
| ""Voice to email technology"",7%,17% |
| Twitter / social networks,5%,13%",5 |
| "28Characteristic,Very useful,Useful |
| Find and book hotels etc.,22%,31% |
| ""Manage parking lots / car services"",27%,13% |
| Internet TV,21%,7% |
| Voice to email technology,7%,17% |
| ""Twitter / social networks"",5%,13%",28 |
| "56Characteristic,2014,2016 |
| Instagram,20%,30% |
| Snapchat,17%,30%",47 |
| "InstagramCharacteristic,2014,2016 |
| Instagram,20%,30% |
| Snapchat,17%,30%",Snapchat |
| "BlueCharacteristic,How consumers can pay,How providers can receive payments |
| Cash,41%,38% |
| Account,15%,46% |
| Mobile,44%,23% |
| PayPal,26%,31% |
| Debit/credit card,79%,23%",light blue |
| "CashCharacteristic,How consumers can pay,How providers can receive payments |
| Cash,41%,38% |
| Account,15%,46% |
| Mobile,44%,23% |
| PayPal,26%,31% |
| Debit/credit card,79%,23%",Cash |
| "66.8Characteristic,Non-food products,Food products |
| 2014,66.8%,33.2% |
| 2013,63.5%,36.5% |
| 2012,62%,38% |
| 2011,59.3%,40.7% |
| 2010,58.1%,41.9% |
| 2009,57.6%,42.4%",66.8 |
| "124.3Characteristic,Non-food products,Food products |
| 2014,66.8%,33.2% |
| 2013,63.5%,36.5% |
| 2012,62%,38% |
| 2011,59.3%,40.7% |
| 2010,58.1%,41.9% |
| 2009,57.6%,42.4%",124.4 |
| "97Characteristic,Number of properties |
| North America (and Caribbean),590 |
| Asia Pacific,601 |
| Europe,288 |
| ""Africa and the Middle East"",158 |
| Latin America (and Mexico),86 |
| 85,85 |
| 79,79",317 |
| "92Characteristic,North America (and Caribbean),Asia Pacific,Europe,Africa and the Middle East,Latin America (and Mexico) |
| 2015,590,622,317,174,97 |
| 2014,601,288,163,86,84 |
| 2013,590,263,158,85,79",54 |
| "1.16Characteristic,Q4 '12,Q4 '13 |
| Facebook,1.16,1.24 |
| Pinterest,0.665,0.74 |
| Twitter,0.43,0.65 |
| Reddit,0.27,0.57",0.27 |
| "0.5Characteristic,Q4 '12,Q4 '13 |
| Facebook,1.16,1.24 |
| Pinterest,0.66,0.74 |
| Twitter,0.43,0.65 |
| Reddit,0.27,0.57",0.89 |
| "41Characteristic,Inbound,Domestic,Outbound |
| 2014,32%,34%,32% |
| 2012-13,31%,47%,38% |
| 2010-11,28%,35%,26% |
| 2008-09,20%,13%,41%",41 |
| "34.5Characteristic,Inbound,Domestic,Outbound |
| 2008-09,20%,13%,41% |
| 2010-11,28%,26%,35% |
| 2012-13,31%,47%,38% |
| 2014,32%,34%,32%",32.66 |
| "47.4Characteristic,30-39 years,40-49 years,50-64 years,Over 65 years |
| Medium (100-499 employees),7.5%,27.3%,51%,14.2% |
| Small (1-99 employees),14.7%,26.1%,47.4%,11.8%",11.8 |
| "40-49 yearsCharacteristic,30-39 years,40-49 years,50-64 years,Over 65 years |
| Small (1-99 employees),14.7%,26.1%,47.4%,11.8% |
| Medium (100-499 employees),7.5%,27.3%,51%,14.2%",50-64 years |
| "75Characteristic,Urban,Rural |
| YouTube,72%,81% |
| Facebook,80%,75% |
| Google+,40%,35% |
| Twitter,46%,50% |
| WhatsApp,61%,27% |
| LinkedIn,34%,34% |
| Pinterest,31%,38% |
| Instagram,43%,33% |
| Snapchat,32%,22% |
| Skype,42%,31%",80 |
| "15Characteristic,Urban,Rural |
| YouTube,72%,81% |
| Facebook,75%,80% |
| Google+,40%,35% |
| Twitter,46%,50% |
| WhatsApp,61%,27% |
| Linkedin,34%,- |
| Pinterest,31%,38% |
| Instagram,43%,33% |
| Snapchat,32%,22% |
| Skype,42%,31%",53 |
| "2626Characteristic,New cars,Used cars |
| 2013,3231,2734 |
| 2014,2968,2787 |
| 2015,2993,2877 |
| 2016,2626,3280 |
| 2017,2343,3538 |
| 2018,2314,3871 |
| 2019,2225,4186",3280 |
| "2015Characteristic,New cars,Used cars |
| 2019,2225,4186 |
| 2018,2314,3871 |
| 2017,2343,3538 |
| 2016,2626,3280 |
| 2015,2877,2993 |
| 2014,2787,2968 |
| 2013,3231,2734",2015 |
| "Beauty and cosmeticsCharacteristic,My spending has increased,My spending has decreased |
| Food,47%,- |
| Cleaning products,45%,- |
| Health and medicines,25%,- |
| Sport items,38%,- |
| Office and stationery items,30%,- |
| Beauty and cosmetics,28%,-",Beauty and cosmetics |
| "3Characteristic,My spending has increased,'My spending has decreased' |
| Beauty and cosmetics,28%,- |
| Office and stationery items,30%,- |
| Sport items,38%,- |
| Health and medicines,25%,- |
| Cleaning products,45%,- |
| Food,47%,-",2 |
| "FemaleCharacteristic,Male,Female |
| Current,17.2%,19.9% |
| Binge,10.4%,11.8% |
| Heavy,2.1%,2.3%",Binge |
| "11.01Characteristic,Male,Female |
| Current,17.2%,19.9% |
| Binge,10.4%,11.8% |
| Heavy,2.1%,2.3%",9.9 |
| "WomenCharacteristic,Women,Men |
| ""It's natural. I understand that homosexuals want to find love."",25%,13% |
| I don't discriminate against them, nor do I fear them.,62%,59% |
| Unacceptable,14%,28%",Women |
| "UnacceptableCharacteristic,Women,Men |
| It's natural. I understand that homosexuals want to find love.,25%,13% |
| I don't discriminate against them, nor do I fear them.,62%,59% |
| Unacceptable,14%,28%","I don't discriminate against them, nor do I fear them. |
| "49Characteristic,""Worried about personal health"",""Worried about health of people you live with" |
| Very worried,28%,37% |
| Somewhat worried,49%,38% |
| Not very worried,19%,9% |
| Not worried at all,4%,3% |
| |
| Very worried,28%,37% |
| Somewhat worried,49%,38% |
| Not very worried,19%,9% |
| Not worried at all,4%,3% |
| |
| Anorexia nervosa*,12,-,0 |
| Bulimia Nervosa,41,12,0 |
| One of more eating disorders,53,12,0 |
| |
| Anorexia nervosa*,12,-,0 |
| Bulimia Nervosa,41,12,-,0 |
| One of more eating disorders,53,12,4,- |
| |
| Pneumonia,12%,3% |
| Preterm birth complications,2%,16% |
| Intrapartum-related events,1%,11% |
| Sepsis or meningitis,2%,7% |
| Congenital,4%,5% |
| Other,12%,3% |
| AIDS,1%,- |
| Diarrhoea,8%,-0.3% |
| Tetanus,1%,5% |
| Malaria,5%,6% |
| Injury,1%,- |
| Measles,2%,- |
| |
| Pneumonia,12%,3% |
| Preterm birth complications,2%,16% |
| Intrapartum-related events,1%,11% |
| Sepsis or meningitis,2%,7% |
| Congenital,4%,5% |
| Other,12%,3% |
| AIDS,1%,8% |
| Diarrhoea,8%,0.3% |
| Tetanus,1%,5% |
| Malaria,5%,6% |
| Injury,6%,1% |
| Measles,2%,2% |
| |
| 2019,23%,54%,24% |
| 2018,21%,53%,26% |
| 2017,22%,51%,28% |
| 2016,19%,51%,29% |
| 2015,18%,51%,31% |
| 2014,17%,50%,33% |
| 2011,15%,47%,38% |
| 2008,16%,39%,45% |
| 2005,19%,25%,56% |
| |
| 2019,23%,54%,24% |
| 2018,21%,53%,26% |
| 2017,22%,51%,28% |
| 2016,19%,51%,29% |
| 2015,18%,51%,31% |
| 2014,17%,50%,33% |
| 2011,15%,47%,38% |
| 2008,16%,39%,45% |
| 2005,19%,25%,56% |
| |
| 2016-17,68.7%,62.5% |
| 2015-16,72.5%,67.3% |
| 2014-15,71.9%,69.1% |
| 2013-14,75.6%,74.8% |
| 2012-13,74%,75.6% |
| |
| 2016-17,68.7%,62.5% |
| 2015-16,72.5%,67.3% |
| 2014-15,71.9%,69.1% |
| 2013-14,75.6%,74.8% |
| 2012-13,74%,75.6% |
| |
| 2020,4.5%,4.7% |
| 2019,3.9%,3.4% |
| 2018,3.6%,4.1% |
| 2017,4%,4.3% |
| 2016,3.9%,4.4% |
| 2015,4.4%,4.8% |
| 2014,4.8%,5.2% |
| 2013,5.7%,6.8% |
| 2012,6.1%,6% |
| 2011,5.7%,6.2% |
| 2010,6.9%,5.1% |
| |
| 2020,4.5%,4.7% |
| 2019,3.9%,3.4% |
| 2018,3.6%,4.1% |
| 2017,4%,4.3% |
| 2016,3.9%,4.4% |
| 2015,4.4%,4.8% |
| 2014,4.8%,5.2% |
| 2013,5.7%,5.8% |
| 2012,6.1%,6% |
| 2011,5.7%,6.2% |
| 2010,6.9%,5.1% |
| |
| Jan'18,0.52,0.07,0.11,0.06,0.0,0.42 |
| Feb'18,0.68,0.09,0.11,0.08,0.09,0.44 |
| Mar'18,0.52,0.09,0.08,0.09,0.0,0.43 |
| Apr'18,0.54,0.05,0.09,0.08,0.09,0.45 |
| May'18,0.52,0.07,0.1,0.08,0.09,0.4 |
| Jun'18,0.51,0.13,0.09,0.12,0.09,0.39 |
| Jul'18,0.47,0.09,0.08,0.09,0.0,",Hungary |
| "0.86Characteristic,Germany,Poland,Czechia,Slovakia,Hungary,Ust Luga* |
| Dec'18,0.32,0.08,0.13,0.09,0.52,0.5 |
| Nov'18,0.34,0.08,0.12,0.09,0.66,0.68 |
| Oct'18,0.38,0.08,0.11,0.1,0.66,0.6 |
| Sep'18,0.43,0.1,0.09,0.09,0.51,0.5 |
| Aug'18,0.42,0.32,0.1,0.09,0.54,0.5 |
| Jul'18,0.39,0.26,0.12,0.09,0.13,0.47 |
| Jun'18,0.41,0.3,0.1,0.09,0.07,0 |
| |
| Never married,170,252 |
| Married,524,633 |
| [of them] in an unregistered marriage,69,84 |
| Widowed,186,38 |
| Divorced or separated,120,77 |
| |
| Never married,170,252 |
| Married,524,633 |
| [of them] in an unregistered marriage,69,84 |
| Widowed,186,38 |
| Divorced or separated,120,77 |
| |
| 2020,61000,- |
| 2019,63000,- |
| 2018,68000,- |
| 2017,67200,- |
| 2016,67800,- |
| |
| 2020,61000,- |
| 2019,63000,8000 |
| 2018,68000,8000 |
| 2017,67200,8000 |
| 2016,67800,7800 |
| |
| 2019,5.83,5.9 |
| 2018,5.73,5.83 |
| 2017,5.67,5.77 |
| 2016,5.6,5.7 |
| 2015,5.54,5.64 |
| 2014,5.49,5.58 |
| 2013,5.44,5.51 |
| 2012,5.39,5.45 |
| 2011,5.35,5.39 |
| 2010,5.33,5.27 |
| 2009,5.26,5.27 |
| |
| 2019,5.83,5.9 |
| 2018,5.73,5.83 |
| 2017,5.67,5.77 |
| 2016,5.6,5.7 |
| 2015,5.54,5.64 |
| 2014,5.49,5.58 |
| 2013,5.44,5.51 |
| 2012,5.39,5.45 |
| 2011,5.35,5.39 |
| 2010,5.33,5.31 |
| 2009,5.27,5.22 |
| |
| Leaders (Directors and above),71%,29% |
| Tech,76%,24% |
| Non-tech,49%,51% |
| |
| Leaders (Directors and above),71%,29% |
| Tech,76%,24% |
| Non-tech,49%,51% |
| |
| Production,transportation,and material moving,18.5% |
| Natural resources,construction,and maintenance,17.1% |
| Office and administrative support,18.6%,6.4% |
| Sales and related,8.4%,8.5% |
| Service,16.5%,12.1% |
| Professional and related,20.2%,31% |
| ""Management, business and financial operations"",18.2%,17.1% |
| |
| ""Management, business and financial operations"",18.2%,17.1% |
| Professional and related,31%,20.2% |
| Service,16.5%,12.1% |
| Sales and related,8.4%,8.5% |
| ""Office and administrative support"",18.6%,6.4% |
| Natural resources, construction, and maintenance,1%,17.1% |
| Production, transportation, and material moving,6.3%,18.5%","Natural resources, construction, and maintenance |
| "[2004/05, 2005/06, 2006/07, 2007/08, 2008/09, 2009/10, 2010/11, 2011/12, 2012/13, 2013/14, 2014/15, 2015/16, 2016/17, 2017/18, 2018/19, 2019/20]",Year |
| |
| 2019/20,-,-,- |
| 2018/19,-,-,- |
| 2017/18,-,-,- |
| 2016/17,-,-,- |
| 2015/16,-,-,- |
| 2014/15,-,-,- |
| 2013/14,-,-,- |
| 2012/13,625512.5,-,- |
| 2011/12,600556.0,-,- |
| 2010/11,578598.0,-,- |
| 2009/10,568238.5,-,- |
| 2008/09,554070.0,-,- |
| 2007/08,590294.0,-,- |
| 2006/07,530174.0,-,- |
| 2005/06,591438.0,-,- |
| 2004/05,561456. |
| |
| Toys,34%,13%,18% |
| Baby,10%,13%,-3% |
| |
| Toys,34%,13%,18% |
| Baby,10%,13%,-3% |
| |
| Anorexia nervosa*,0.1,0.1 |
| Bulimia Nervosa,0.1,0.1 |
| One of more eating disorders,0.1,0.1 |
| |
| ""Anorexia nervosa*"",0.1,0.1 |
| ""Bulimia Nervosa"",0.1,0.1 |
| ""One of more eating disorders"",0.1,0.1 |
| |
| United States,46%,53%,2%,- |
| Britain,78%,20%,2%,- |
| France,85%,15%,0%,- |
| Germany,66%,33%,1%,- |
| Spain,80%,19%,1%,- |
| |
| United States,46%,53%,2%,- |
| Britain,78%,20%,-,- |
| France,85%,15%,0%,- |
| Germany,66%,33%,1%,- |
| Spain,80%,19%,1%,- |
| |
| Men,56%,33%,11% |
| Women,48%,37%,15% |
| |
| Men,56%,33%,11% |
| Women,48%,37%,15% |
| |
| Medical supplies,5%,24% |
| Pharmaceuticals,34%,47% |
| |
| Medical supplies,5%,24% |
| Pharmaceuticals,34%,47% |
| |
| December 2010,36%,33%,31% |
| January 2010,36%,24%,40% |
| January 2009,33%,43%,24% |
| November 2007,42%,34%,24% |
| |
| December 2010,36%,33%,31% |
| January 2010,36%,24%,40% |
| January 2009,43%,24%,33% |
| November 2007,42%,34%,24% |
| |
| Total Millennials (ages 18-33),27%,68% |
| Total Gen Xers (ages 34-49),38%,55% |
| Total Boomers (ages 50-68),45%,48% |
| Total Silents (ages 69-86),50%,38% |
| |
| Total Millennials (ages 18-33),27%,68% |
| Total Gen Xers (ages 34-49),38%,55% |
| Total Boomers (ages 50-68),45%,48% |
| Total Silents (ages 69-86),50%,38% |
| |
| ""Lending/Investment standards"",7%,38%,15% |
| ""Keeping information and money safe"",8%,38%,18% |
| Know-how of own industry workings,14%,37%,17% |
| Moral standards,14%,32%,12% |
| Cost of capital,16%,36%,11% |
| ""Generating social returns on investment"",16%,34%,10% |
| ""Generating financial returns on investments"",17%,41%,7% |
| Accessibility,21%,36%,10% |
| Speed,23%,33%,10% |
| Flexibility,26%,33%,9% |
| Willingness to take risks,29%,29%,10% |
| |
| Lending/Investment standards,7%,38%,15% |
| Keeping information and money safe,8%,38%,18% |
| Know-how of own industry workings,14%,37%,17% |
| Moral standards,14%,32%,12% |
| Cost of capital,16%,36%,11% |
| Generating social returns on investment,16%,34%,10% |
| Generating financial returns on investments,17%,41%,7% |
| Accessibility,21%,36%,10% |
| Speed,23%,33%,10% |
| Flexibility,26%,33%,9% |
| Willingness to take risks,29%,29%,10% |
| |
| From home,55%,40%,55%,58%,65% |
| Live event,35%,53%,38%,30%,20% |
| Don't watch sports,10%,7%,7%,10%,13%",Yes |
| "54Characteristic,Total,18-34,35-44,45-54,55+ |
| From home,55%,40%,55%,58%,65% |
| Live event,35%,53%,38%,30%,20% |
| Don't watch sports,7%,10%,7%,10%,13% |
| |
| Their cellphone manufacturers,13%,13%,43%,27% |
| Their credit card companies,15%,15%,42%,27% |
| Their cellphone service providers,15%,15%,47%,21% |
| Their e-mail providers,13%,17%,46%,20% |
| Companies/retatiers they do business with,15%,21%,46%,14% |
| The federal government,28%,21%,37%,12% |
| Social media sites they use,24%,27%,38%,9% |
| |
| Their cellphone manufacturers,13%,13%,43%,27% |
| Their credit card companies,15%,15%,42%,27% |
| Their cellphone service providers,15%,15%,47%,21% |
| Their e-mail providers,13%,17%,46%,20% |
| Companies/retatiers they do business with,15%,21%,46%,14% |
| The federal government,28%,21%,37%,12% |
| Social media sites they use,24%,27%,38%,9% |
| |
| Boys grade 6,14%,18% |
| Boys grade 7,15%,25% |
| Boys grade 8,17%,23% |
| Boys grade 9,20%,24% |
| Boys grade 10,20%,23% |
| Girls grade 6,19%,9% |
| Girls grade 7,10%,28% |
| Girls grade 8,11%,26% |
| Girls grade 9,10%,31% |
| Girls grade 10,10%,34% |
| |
| Boys grade 6,14%,18% |
| Boys grade 7,15%,25% |
| Boys grade 8,17%,23% |
| Boys grade 9,20%,24% |
| Girls grade 10,34%,20% |
| Girls grade 9,10%,31% |
| Girls grade 8,11%,26% |
| Girls grade 7,10%,28% |
| Girls grade 6,19%,9% |
| |
| Love eating at quick service restaurants,63%,48% |
| Like eating at quick service restaurants,26%,22% |
| Hate eating at quick service restaurants,1%,9% |
| |
| Hate eating at quick service restaurants,1%,9% |
| Like eating at quick service restaurants,26%,48% |
| Love eating at quick service restaurants,63%,48% |
| |
| Public institutions,7411,6639 |
| Private nonprofit institution,35659,8224 |
| Private for-profit institution,14991,7553 |
| |
| Private nonprofit institution,35659,8224 |
| Private for-profit institution,14991,7553 |
| Public institutions,7411,6639 |
| |
| 2019,83%,84%,72% |
| 2018,79%,77%,71% |
| 2017,78%,75%,69% |
| 2016,82%,80%,72% |
| 2015,82%,80%,71% |
| |
| 2019,83%,84%,72% |
| 2018,79%,77%,71% |
| 2017,78%,75%,69% |
| 2016,82%,80%,72% |
| 2015,82%,80%,71% |
| |
| 2018,83.38,76.35 |
| 2017,83.27,76.18 |
| 2016,83.15,76.01 |
| 2015,83.03,75.85 |
| 2014,82.9,75.68 |
| 2013,82.76,75.49 |
| 2012,82.6,75.27 |
| 2011,82.44,75.03 |
| 2010,82.26,74.76 |
| 2009,82.08,74.49 |
| 2008,81.89,74.22 |
| |
| 2018,83.38,76.35 |
| 2017,83.27,76.18 |
| 2016,83.15,76.01 |
| 2015,83.03,75.85 |
| 2014,82.9,75.68 |
| 2013,82.76,75.49 |
| 2012,82.6,75.27 |
| 2011,82.44,75.03 |
| 2010,82.26,74.76 |
| 2009,82.08,74.49 |
| 2008,81.89,74.22 |
| |
| Go to the grocery store,11%,63%,20%,- |
| Vote in a political election,13%,51%,11%,24% |
| Go out to eat in a restaurant or cafe,19%,57%,8%,17% |
| Invest in the stock market,24%,46%,19%,11% |
| Go to a religious gathering or meeting,24%,51%,13%,12% |
| Go to a work conference,25%,48%,20%,6% |
| Go to a work social event,26%,53%,10%,10% |
| Go to a shopping mall,27%,52%,8%,13% |
| Go to a movie theater,29%,50%,10%,11% |
| Go to a museum,29%,52%,11%,8% |
| Use a ride-hailing service,30%,47%,15%,8% |
| Go to the gym,30%,47%,14%,9% |
| Take a vacation,3 |
| |
| Go to the grocery store,11%,63%,20%,- |
| Vote in a political election,13%,51%,11%,24% |
| Go out to eat in a restaurant or cafe,19%,57%,8%,17% |
| Invest in the stock market,24%,46%,19%,11% |
| To a religious gathering or meeting,24%,51%,13%,12% |
| Go to a work conference,25%,48%,20%,6% |
| Go to a social event,26%,53%,10%,10% |
| Go to a shopping mall,27%,52%,8%,13% |
| Go to a movie thea ter,29%,50%,10%,11% |
| Go to a museum,29%,52%,11%,8% |
| Use a ride-hailing service,30%,47%,15%,8% |
| Go to the gym,30%,47%,14%,9% |
| Take a vacation,3 |
| |
| 2019,352,140 |
| 2018,377,129 |
| 2017,411,121 |
| 2016,462,113 |
| 2015,448,103 |
| 2014,419,85 |
| 2013,386,65 |
| |
| 2013,386,65 |
| 2014,419,85 |
| 2015,448,103 |
| 2016,462,113 |
| 2017,411,121 |
| 2018,377,129 |
| 2019,352,140 |
| |
| 2019,15.53%,68.3%,16.17% |
| 2018,15.45%,68.92%,15.63% |
| 2017,15.34%,69.58%,15.08% |
| 2016,15.26%,70.19%,14.55% |
| 2015,15.26%,70.7%,14.05% |
| 2014,15.19%,71.16%,13.65% |
| 2013,15.17%,71.52%,13.3% |
| 2012,15.2%,71.8%,13% |
| 2011,15.26%,70.02%,12.72% |
| 2010,15.34%,72.21%,12.45% |
| 2 |
| |
| 2019,15.53%,68.3%,16.17% |
| 2018,15.45%,68.92%,15.63% |
| 2017,15.34%,69.58%,15.08% |
| 2016,15.26%,70.19%,14.55% |
| 2015,15.26%,70.7%,14.05% |
| 2014,15.19%,71.16%,13.65% |
| 2013,15.17%,71.52%,13.3% |
| 2012,15.2%,71.8%,13% |
| 2011,15.26%,70.02%,12.72% |
| 2010,15.34%,72.21%,12.45 |
| |
| 2020,2639.59,475.9 |
| 2019,3099.22,930.89 |
| 2018,4046.31,784.94 |
| 2017,4136.56,802.4 |
| 2016,4375.59,778.31 |
| 2015,3977.69,711.36 |
| |
| 2020,2639.59,475.9 |
| 2019,3099.22,930.89 |
| 2018,4046.31,784.94 |
| 2017,4136.56,802.4 |
| 2016,4375.59,778.31 |
| 2015,3977.69,711.36 |
| |
| 2019,21.43,- |
| 2018,20.92,- |
| 2017,20.43,- |
| 2016,19.95,- |
| 2015,19.48,- |
| 2014,19.02,- |
| 2013,18.57,- |
| 2012,18.14,- |
| 2011,17.72,- |
| 2010,17.31,- |
| 2009,16.92,- |
| |
| 2019,21.43,20.92 |
| 2018,20.92,20.69 |
| 2017,20.43,20.43 |
| 2016,19.95,19.66 |
| 2015,19.48,19.3 |
| 2014,19.02,18.96 |
| 2013,18.57,18.48 |
| 2012,18.14,17.86 |
| 2011,17.72,17.29 |
| 2010,17.31,16.83 |
| 2009,16.92,16.47 |
| |
| Solvesd homicides,415,406,385 |
| Unsolved homicides,128,106,131 |
| |
| Solved homicides,415,406,385 |
| Unsolved homicides,128,106,131 |
| |
| India,6423 |
| China,5933 |
| United States,4336 |
| Brazil,2918 |
| Pakistan,1350 |
| Uzbekistan,762 |
| Turkey,751 |
| Greece,365 |
| Mexico,342 |
| Argentina,305 |
| |
| India,6423 |
| China,5933 |
| United States,4336 |
| Brazil,2918 |
| Pakistan,1350 |
| Uzbekistan,762 |
| Turkey,751 |
| Greece,365 |
| Mexico,342 |
| Argentina,305 |
| |
| White,457,399,370,457,485 |
| Black,130,223,209,235,241 |
| Hispanic,179,148,158,169,180 |
| Other,44,36,39,28,4 |
| Unknown,84,204,202,126,193 |
| |
| Unknown,84,204202,126,193,- |
| Other,44,36,39,28,0 |
| Hispanic,39,148,158,169,- |
| Black,209,235241,74,-,- |
| White,457,399,370,457,- |
| |
| 2020,41.49%,26.18%,32.33% |
| 2019,42.39%,25.58%,32.04% |
| 2018,43.33%,24.95%,31.72% |
| 2017,44.05%,24.7%,31.25% |
| 2016,45.14%,23.98%,30.87% |
| 2015,45.67%,24.06%,30.27% |
| 2014,45.84%,24.55%,29.61% |
| 2013,46.36%,24.55%,29.09% |
| 2012,47%,24.36%,28.64% |
| 2011,48.98%,23.49%,27.53% |
| 2010,51.52%, |
| |
| 2020,41.49%,26.18%,32.33% |
| 2019,42.39%,25.58%,32.04% |
| 2018,43.33%,24.95%,31.72% |
| 2017,44.05%,24.7%,31.25% |
| 2016,45.14%,23.98%,30.87% |
| 2015,45.67%,24.06%,30.27% |
| 2014,45.84%,24.55%,29.61% |
| 2013,46.36%,24.55%,29.09% |
| 2012,47%,24.36%,28.64% |
| 2011,48.98%,23.49%,27.53% |
| 2010,51.52%, |
| |
| Africa,41%,3% |
| World,26%,9% |
| Latin America,Caribbean,24%,9% |
| Asia,24%,9% |
| Oceania,23%,12% |
| North America,18%,17% |
| Europe,16%,19% |
| |
| Africa,41%,3% |
| World,26%,9% |
| Latin America, Caribbean,24%,9% |
| Asia,24%,9% |
| Oceania,23%,12% |
| North America,18%,17% |
| Europe,16%,19% |
| |
| Europe (total),75,82 |
| Western Europe,79,84 |
| Southern Europe,79,84 |
| Northern Europe,79,84 |
| Eastern Europe,69,79 |
| |
| Europe (total),75,82 |
| Western Europe,79,84 |
| Southern Europe,79,84 |
| Northern Europe,79,84 |
| Eastern Europe,69,79 |
| |
| 2019,25.1%,27.5%,47.4% |
| 2018,26.1%,27.6%,46.3% |
| 2017,27%,28.1%,44.9% |
| 2016,27.7%,28.8%,43.5% |
| 2015,28.3%,29.3%,42.4% |
| 2014,29.5%,30.1%,40.6% |
| 2013,31.4%,30.1%,38.5% |
| 2012,33.6%,30.3%,36.1% |
| 2011,34.8%,29.5%,35.7% |
| 2010,36.7%,28.7%,34.6% |
| 2009,38.1%,27.8%,34.1% |
| |
| 2019,25.1%,27.5%,47.4% |
| 2018,26.1%,27.6%,46.3% |
| 2017,27%,28.1%,44.9% |
| 2016,27.7%,28.8%,43.5% |
| 2015,28.3%,29.3%,42.4% |
| 2014,29.5%,29.9%,40.6% |
| 2013,31.4%,30.1%,38.5% |
| 2012,33.6%,30.3%,36.1% |
| 2011,34.8%,29.5%,35.7% |
| 2010,36.7%,28.7%,34.6% |
| 2009,38.1%,27.8%,34.1% |
| |
| Compulsory checks,37% |
| Work from home,30% |
| Others,33% |
| |
| Compulsory checks,37% |
| Work from home,30% |
| Others,33% |
| |
| Western Europe,52.13,44 |
| Canada,56.15,52 |
| United Kingdom,44.98,40 |
| United States,59.66,53 |
| |
| Western Europe,52.13,44 |
| Canada,56.15,52 |
| United Kingdom,44.98,40 |
| United States,59.66,53 |
| |
| Optimistic,43% |
| Hopeful,49% |
| Cautious,6% |
| Pessimistic,2% |
| |
| Optimistic,43% |
| Hopeful,49% |
| Cautious,6% |
| Pessimistic,2% |
| |
| Netflix,67.9% |
| Amazon Prime Video,9.2% |
| Hulu,9.2% |
| DC Universe,4.9% |
| CBS All Access,4.3% |
| Other,4.5% |
| |
| Netflix,67.9% |
| Amazon Prime Video,9.2% |
| Hulu,9.2% |
| DC Universe,4.9% |
| CBS All Access,4.3% |
| Other,4.5% |
| |
| Female,53.5% |
| Male,46.5% |
| |
| Female,53.5% |
| Male,46.5% |
| |
| 2018,78.17,74.08 |
| 2017,78.01,73.9 |
| 2016,77.84,73.72 |
| 2015,77.66,73.52 |
| 2014,77.48,73.32 |
| 2013,77.29,73.11 |
| 2012,77.11,72.9 |
| 2011,76.92,72.7 |
| 2010,76.73,72.5 |
| 2009,76.55,72.3 |
| 2008,76.37,72.1 |
| |
| 2018,78.17,74.08 |
| 2017,78.01,73.9 |
| 2016,77.84,73.72 |
| 2015,77.66,73.52 |
| 2014,77.48,73.32 |
| 2013,77.29,73.11 |
| 2012,77.11,72.9 |
| 2011,76.92,72.7 |
| 2010,76.73,72.5 |
| 2009,76.55,72.3 |
| 2008,76.37,72.1 |
| |
| 2018,59.9%,40.1% |
| 2017,60.4%,39.6% |
| 2016,59%,41% |
| 2015,59%,41% |
| 2014,60%,40% |
| 2013,61%,39% |
| 2012,61%,39% |
| 2011,60%,40%","[2015, 2016] |
| |
| 2018,59.9%,40.1% |
| 2017,60.4%,39.6% |
| 2016,59%,41% |
| 2015,59%,41% |
| 2014,60%,40% |
| 2013,61%,39% |
| 2012,61%,39% |
| 2011,60%,40% |
| |
| 2018,12000,7750,11750 |
| |
| 2018,12000,11750,7750 |
| |
| Owned,1065731 |
| Chartered,701548 |
| Orderbook,283920 |
| |
| Owned,1065731 |
| Chartered,701548 |
| Orderbook,283920 |
| |
| 2019/2020,33%,33%,33%,1% |
| |
| 2019/2020,33%,33%,33%,1% |
| |
| Overall quality of life,74%,25% |
| Influence of religion,54%,40% |
| Opportunity to get ahead through hard work,45%,35% |
| Moral and ethical climate,62%,35% |
| Size and influence of major corporations,63%,35% |
| Our system and how well it works,35%,65% |
| Size and power of federal government,33%,66% |
| Income and wealth distribution,32%,67% |
| |
| Overall quality of life,74%,25% |
| Influence of organized religion,54%,40% |
| Opportunity to get ahead through hard work,54%,45% |
| Moral and ethical climate,35%,62% |
| Size and influence of major corporations,35%,63% |
| Our system of government and how well it works,35%,65% |
| Size and power of federal government,33%,66% |
| Income and wealth distribution,32%,67% |
| |
| Ukraine,11%,76%,95% |
| Lithuania,20%,78%,91% |
| Russia,26%,80%,82% |
| |
| Ukraine,11%,76%,95% |
| Lithuania,20%,78%,91% |
| Russia,26%,80%,82% |
| |
| 2009,1%,2% |
| 2019,5%,7% |
| |
| 2009,1%,2% |
| 2019,5%,7% |
| |
| ""Metro / small bus*"",83% |
| Bus,34% |
| ""Private car /motorbike"",28% |
| Walking,27% |
| Bicycle,12% |
| ""Taxi, Uber or similar"",11% |
| Other,5% |
| |
| ""Metro / small bus*"",83% |
| Bus,34% |
| ""Private car /motorbike"",28% |
| Walking,27% |
| Bicycle,12% |
| ""Taxi, Uber or similar"",11% |
| Other,5% |
| |
| 2019,55.2,42.1 |
| 2018,58.0,33.1 |
| 2017,72.9,32.5 |
| 2016,82.2,33.0 |
| 2015,95.5,46.0 |
| 2014,63.0,46.0 |
| |
| 2019,55.2,42.1 |
| 2018,58.0,33.1 |
| 2017,72.9,32.5 |
| 2016,82.2,33.0 |
| 2015,95.5,46.0 |
| 2014,63.0,46.0 |
| |
| Always, often or sometimes,63% |
| Rarely or never,37% |
| |
| Always, often or sometimes,63% |
| Rarely or never,37% |
| |
| 2020*,261.87 |
| 2019,1215.83 |
| 2018,1197.39 |
| 2017,1181.64 |
| 2016,1342.23 |
| 2015,1368.53 |
| 2014,1254.14 |
| 2013,1110.34 |
| 2012,953.35 |
| 2011,852.21 |
| |
| 2020*,261.87 |
| 2019,1215.83 |
| 2018,1197.39 |
| 2017,1181.64 |
| 2016,1342.23 |
| 2015,1368.53 |
| 2014,1254.14 |
| 2013,1110.34 |
| 2012,953.35 |
| 2011,852.21 |
| |
| 2030*,850,650 |
| 2020*,700,450 |
| 2015*,450,408 |
| 2012,386,180 |
| 2006,8,35.1 |
| |
| 2030*,850,-,650 |
| 2020*,700,450,498 |
| 2015*,450,250,-,408 |
| 2012,386,180,-,308 |
| 2006,35,8.1,-,- |
| "45 to 54Characteristic,""No high school degree"",High school graduate,""Some college, no degree" |
| 25 to 34,45%,54%,71%,68%,81%,43% |
| 35 to 44,64%,71%,79%,43%,51% |
| 45 to 54,36%,52%,62%,67%,78% |
| 55 to 64,32%,48%,56%,61%,75% |
| 65 and older,30%,42%,52%,61%,67% |
| |
| 25 to 34,54%,71%,68%,81%,43%,51% |
| 35 to 44,64%,71%,79%,43%,51%,64% |
| 45 to 54,36%,52%,62%,67%,78%,44% |
| 55 to 64,32%,48%,56%,61%,75%,23% |
| 65 and older,30%,42%,52%,61%,67%,15% |
| |
| ""Yes, I'm ready"",16% |
| ""No, but I plan to soon"",11% |
| ""No, and I don't plan to"",73% |
| |
| ""No, but I plan to soon"",11% |
| Yes,16% |
| ""No, and I don't plan to"",73%","No, but I plan to soon" |
| "YesCharacteristic,Men,Women |
| 2019,38.4,35.5 |
| 2018,38.0,35.2 |
| 2017,38.0,35.0 |
| 2016,37.7,34.7 |
| 2015,37.5,34.4 |
| 2014,37.1,33.9 |
| 2013,37.0,33.8 |
| 2012,37.0,33.8 |
| 2011,36.9,33.8 |
| 2010,36.6,34.0 |
| 2009,35.8,33.4 |
| 2008,36.4,33.4",No |
| "35.6Characteristic,Men,Women |
| 2019,38.4,35.5 |
| 2018,38.2,35.2 |
| 2017,38.0,35.0 |
| 2016,37.7,34.7 |
| 2015,37.5,34.4 |
| 2014,37.1,33.9 |
| 2013,37.0,33.8 |
| 2012,37.0,33.8 |
| 2011,36.9,33.8 |
| 2010,36.6,33.4 |
| 2009,36.5,33.4 |
| 2008,36.4,33.4",70.8 |
| "1.69615Characteristic,Share of individuals |
| Women,38.8% |
| Men,61.2%",1.577 |
| "61.2Characteristic,Share of users |
| Women,38.8% |
| Men,61.2%",61.2 |
| "2002Characteristic,Per capita real GDP in chained 2012 U.S. dollars |
| 2019,52664 |
| 2018,51848 |
| 2017,50972 |
| 2016,50893 |
| 2015,49960 |
| 2014,49291 |
| 2013,47578 |
| 2012,48150 |
| 2011,46663 |
| 2010,45158 |
| 2009,44169 |
| 2008,44777 |
| 2007,47077 |
| 2006,48393 |
| 2005,47433 |
| 2004,46660 |
| 2003,45707 |
| 2002,45122 |
| 2001,44068 |
| 2000,44792",2001 |
| "405Characteristic,Per capita real GDP in chained 2012 U.S. dollars |
| 2019,52664 |
| 2018,51848 |
| 2017,50972 |
| 2016,49392 |
| 2015,49960 |
| 2014,49291 |
| 2013,47578 |
| 2012,48234 |
| 2011,46663 |
| 2010,45158 |
| 2009,46332 |
| 2008,44169 |
| 2007,47077 |
| 2006,48428 |
| 2005,47433 |
| 2004,46660 |
| 2003,45707 |
| 2002,45122 |
| 2001,44068 |
| 2000,44792",585 |
| "BlackCharacteristic,No, most are not corrupt,""Yes, some are corrupt"",""Yes, almost all of them are corrupt"" |
| 16-17 years,13%,21%,66% |
| 18-25 years,16%,21%,63% |
| 26-34 years,12%,27%,61% |
| 34 years and older,10%,35%,56% |
| Total,14%,24%,62%",Navy blue |
| "No, most are not corruptCharacteristic,No, most are not corrupt,Yes, some are corrupt,Yes, almost all of them are corrupt |
| 16-17 years,13%,21%,66% |
| 18-25 years,16%,63% |
| 26-34 years,12%,61% |
| 34 years and older,10%,56% |
| Total,14%,24%","Yes, almost all of them are corrupt" |
| "Workshops conducted by outside consultants, authors or expertsFormats of professional development,Teachers,Principals |
| Professional conferences,72%,65% |
| ""Workshops conducted by outside consultants, authors or experts"",62%,60% |
| Observations,67%,60% |
| ""Workshops conducted by my colleagues"",55%,63% |
| ""Participating in a personal learning community"",43%,64% |
| Coaches or mentors,37%,57% |
| Reading professional books,37%,57% |
| ""Participating in an online community of peers"",25%,23% |
| Webinars,24%,27%",Professional conferences |
| "52Formats of professional development,""Teachers"",Principals""Professional conferences"",65%,72.0""Workshops conducted by outside consultants, authors or experts"",60%,62.0""Observations"",60%,67.0""Workshops conducted by my colleagues"",55%,63.0""Participating in a personal learning community"",43%,64.0""Coaches or mentors"",37%,57.0""Reading professional books"",37%,57.0""Participating in an online community of peers"",25%,23.0""Webinars"",24%,27.0"""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""","""",""""""",42 |
| "11Characteristic,Yes,No,Not sure about |
| God,79%,11%,10% |
| Angels,72%,16%,12% |
| Heaven,71%,15%,14% |
| Hell,64%,22%,13% |
| The Devil,61%,27%,12%",10 |
| "49Characteristic,Yes,No,Not sure about |
| God,79%,11%,10% |
| Angels,72%,16%,12% |
| Heaven,71%,15%,14% |
| Hell,64%,22%,13% |
| The Devil,61%,27%,12%",18 |
| "4Characteristic,Market share |
| North America,41% |
| EMEA*,26% |
| Greater China,19% |
| APLA**,14%",4 |
| "33Characteristic,Market share |
| North America,41% |
| EMEA*,26% |
| Greater China,19% |
| APLA**,14%",33 |
| "2Characteristic,Share of shipments |
| Commercial,42% |
| Non-commercial,42% |
| Unknown,16%",2 |
| "2.777777778Characteristic,Market value share |
| Commercial,42% |
| Non-commercial,42% |
| Unknown,16%",2.625 |
| "NoCharacteristic,Share of respondents |
| Yes,12.7% |
| No,87.3%",No |
| "9.46Characteristic,Share of respondents |
| Yes,12.7% |
| No,87.3%",74.6 |
| "15Characteristic,Black or African American,Hispanic American or Latino,White / Caucasian |
| 0 check-ups,20%,19%,19% |
| Up to three check-ups,61%,60%,62% |
| Up to five check-ups,12%,16%,11% |
| More than five check-ups,7%,5%,8%",7 |
| "43Characteristic,Black or African American,Hispanic American or Latino,White/Caucasian |
| More than five check-ups,7%,5%,8% |
| Up to five check-ups,12%,16%,11% |
| Up to three check-ups,61%,60%,62% |
| 0 check-ups,20%,19%,19%",68 |
| "685Characteristic,2017,2018,2019 |
| Kidney,685,660,670 |
| Liver,106,98,95 |
| Lung,90,85,69 |
| Heart,37,37,33 |
| Pancreas,18,24,27",685 |
| "2017Characteristic,2017,2018,2019 |
| Kidney,685,660,670 |
| Liver,106,98,95 |
| Lung,90,85,69 |
| Heart,37,37,33 |
| Pancreas,18,24,27",2017 |
| "1991Characteristic,Lower income class,Middle income class,Upper income class |
| 2015,70.3,120.8,51 |
| 2011,68,117.6,46.6 |
| 2001,57.6,111.2,38.3 |
| 1991,50.1,102.1,31 |
| 1981,42.4,94.8,24.6 |
| 1971,33.2,80.0,18.4",2015 |
| "94.1Characteristic,Lower income class,Middle income class,Upper income class |
| 2015,70.3,120.8,51 |
| 2011,68.0,117.6,46.6 |
| 2001,57.6,111.2,38.3 |
| 1991,50.1,102.1,31 |
| 1981,42.4,94.8,24.6 |
| 1971,33.2,80.0,18.4",34.98 |
| "4Characteristic,Share of respondents who believe coronavirus is a threat |
| United Kingdom,60% |
| Italy,60% |
| Germany,50% |
| Sweden,48% |
| Spain,48% |
| Finland,39% |
| Norway,39% |
| Denmark,30%",3 |
| "[United Kingdom, Denmark]Characteristic,Share of respondents who believe Coronavirus is a threat |
| United Kingdom,60% |
| Italy,60% |
| Germany,50% |
| Sweden,48% |
| Spain,48% |
| Finland,39% |
| Norway,39% |
| Denmark,30%",3 |
| "CaliforniaProduction value in thousand U.S. dollars,California,7676076 |
| Arizona,1154644 |
| North Carolina,469399 |
| Washington,299824 |
| New York,222273 |
| Texas,215990 |
| Michigan,196907 |
| Wisconsin,150694",California |
| "453.33Production value in thousand U.S. dollars,Population |
| California,7676076 |
| Florida,1168155 |
| Arizona,1154644 |
| Georgia,583351 |
| North Carolina,469399 |
| Washington,299824 |
| New York,222273 |
| Texas,215990 |
| Michigan,196907 |
| Wisconsin,150694",187863.67 |
| "GreenCharacteristic,Market share |
| Paramount 2,36 |
| Sony 1,26 |
| Fox 4,23 |
| Universal 3,12 |
| Disney 1,12 |
| Warner Bros. 2,-",green |
| "Sony 1Characteristic,Market share value |
| Paramount 2,2 |
| Sony 1,1 |
| Universal 3,3 |
| Fox 4,4 |
| Warner Bros. 2,2 |
| Dinsley,1",Fox |
| "44.51Characteristic,Agriculture,Industry,Services |
| 2019,6.78%,31.3%,48.82% |
| 2018,6.59%,31.27%,47.81% |
| 2017,7.57%,31.55%,47.63% |
| 2016,6.9%,30.96%,48.52% |
| 2015,6.28%,32.69%,47.74% |
| 2014,7.3%,35.38%,45.65% |
| 2013,6.81%,35.9%,45.42% |
| 2012,8.13%,36.28%,43.29% |
| 2011,8%,36.09%,44.13% |
| 2010,8.89%,35.39%,43.48% |
| 2009,8.13%,36.11%,42.1",-30.03 |
| "AgricultureCharacteristic,Agriculture,Industry,Services |
| 2019,6.78%,31.3%,48.82% |
| 2018,6.59%,31.27%,47.81% |
| 2017,7.57%,31.55%,47.63% |
| 2016,6.9%,30.96%,48.52% |
| 2015,6.28%,32.69%,47.74% |
| 2014,7.3%,35.38%,45.65% |
| 2013,6.81%,35.9%,45.42% |
| 2012,8.13%,36.28%,43.29% |
| 2011,8%,36.09%,44.13% |
| 2010,8.89%,35.39%,43.48% |
| 2009,8.13%,36.11%,42.17%",36.28 |
| "578.4Characteristic,Men,Women |
| 2019,928.34,1181.71 |
| 2018,928.34,1181.71 |
| 2017,863.83,1177.59 |
| 2016,894.49,1154.19 |
| 2015,863.83,1155.34 |
| 2014,892.76,1156.91 |
| 2013,863.45,1159.36 |
| 2012,863.35,1118.29 |
| 2011,876.73,1067.49 |
| 2010,818.71,1069.38 |
| 2009,751.52,998.79 |
| 2008,754.02,988.36 |
| 2007,72",1343.75 |
| "2014Characteristic,Men,Women |
| 2019,967.61,1181.71 |
| 2018,928.34,1181.71 |
| 2017,889.74,1173.87 |
| 2016,894.49,1154.19 |
| 2015,889.12,1156.2 |
| 2014,892.76,1156.91 |
| 2013,883.59,1154.68 |
| 2012,863.35,1118.29 |
| 2011,868.05,1098.7 |
| 2010,818.71,1069.38 |
| 2009,786.16,998.79 |
| 2008,751.52,987.9 |
| 2007,725.31",2000 |
| "RBSCharacteristic,Barclays,RBS,Lloyds,HSBC,SCB |
| H1 2014,406,217,240,195,210 |
| H1 2013,400,197,201,217,220 |
| H1 2012,186,190,193,237,230",Barclays |
| "52Characteristic,Barclays,RBS,Lloyds,HSBC,SCB |
| H1 2014,406,217,240,-,195 |
| H1 2013,-,-,217,220,- |
| H1 2012,186,190,-,193,230",35 |
| "70Characteristic,Laptop,Smartphone,Tablets |
| 2011,39%,29%,5% |
| 2014,70%,63%,40%",63 |
| "LaptopCharacteristic,Laptop,Smartphone,Tablets |
| 2011,39%,29%,5% |
| 2014,70%,63%,40%",Tablets |
| "39.3Characteristic,Regular consumers*,Casual consumers**,Non-consumers |
| 2015,16.4%,50.8%,32.8% |
| 2010,17.8%,44.1%,38% |
| 2005,20.7%,41.3%,38% |
| 2000,23.8%,43.4%,32.8% |
| 1998,25.5%,39.3%,35.2% |
| 1995,27.9%,41.2%,30.9% |
| 1990,30.2%,36.9%,32.9% |
| 1985,41.5%,32.3%,26.2% |
| 1980,50.7%,30.1%,19.2%",43.4 |
| "Casual consumersCharacteristic,Regular consumers*,Casual consumers**,Non-consumers |
| 2015,16.4%,50.8%,32.8% |
| 2010,17.8%,44.1%,38% |
| 2005,20.7%,41.3%,38% |
| 2000,23.8%,43.4%,32.8% |
| 1998,25.5%,39.3%,35.2% |
| 1995,27.9%,41.2%,30.9% |
| 1990,30.2%,36.9%,32.9% |
| 1985,41.5%,32.3%,26.2% |
| 1980,50.7%,30.1%,19.2%","[Casual consumers**, Non-consumers]" |
| "13Characteristic,Percentage of population |
| 2019,10.7% |
| 2018,10.3% |
| 2017,10.7% |
| 2016,10.2% |
| 2015,11% |
| 2014,11.5% |
| 2013,11.8% |
| 2012,11.2% |
| 2011,12.2% |
| 2010,13% |
| 2009,11.7% |
| 2008,12% |
| 2007,12.1% |
| 2006,11.4% |
| 2005,11.2% |
| 2004,12.1% |
| 2003,11.7% |
| 2002,12.5% |
| 2001,12.1% |
| 2000,11.6%",13 |
| "10.8Characteristic,Percentage of population |
| 2019,10.8% |
| 2018,10.7% |
| 2017,10.3% |
| 2016,10.7% |
| 2015,11% |
| 2014,11.5% |
| 2013,11.8% |
| 2012,11.2% |
| 2011,12.2% |
| 2010,13% |
| 2009,11.7% |
| 2008,12% |
| 2007,12.1% |
| 2006,11.4% |
| 2005,11.2% |
| 2004,12.1% |
| 2003,11.7% |
| 2002,12.5% |
| 2001,12.1% |
| 2000,11.6%",10.57 |
| "46.27Characteristic,Agriculture,Industry,Services |
| 2020,21.28%,30.15%,48.57% |
| 2019,21.71%,30.1%,48.2% |
| 2018,22.31%,30.03%,47.66% |
| 2017,22.78%,30.12%,47.1% |
| 2016,23.1%,29.88%,47.02% |
| 2015,25.59%,28.46%,45.96% |
| 2014,28.35%,28.93%,42.72% |
| 2013,29.25%,28.29%,42.46% |
| 2012,29.71%,28.21%,42.08% |
| 2011,29.26%,28.56%,42.18% |
| 2010,31",31.01 |
| "24.87Characteristic,Agriculture,Industry,Services |
| 2020,21.28%,30.15%,48.57% |
| 2019,21.71%,30.1%,48.2% |
| 2018,22.31%,30.03%,47.66% |
| 2017,22.78%,30.12%,47.1% |
| 2016,23.1%,29.88%,47.02% |
| 2015,25.59%,28.46%,45.96% |
| 2014,28.35%,28.93%,42.72% |
| 2013,29.25%,28.29%,42.46% |
| 2012,29.71%,28.21%,42.08% |
| 2011,29.26%,28.56%,42.18% |
| 2010,31",9.66 |
| "YesCharacteristic,Share of respondents |
| Yes,77% |
| No,16% |
| I don't know,7% |
| |
| Yes,77% |
| No,16% |
| I don't know,7%",23 |
| "56Characteristic,Other,Games,Video and entertainment,Social and communication |
| 2019,19%,9%,21%,50% |
| 2018,19%,9%,20%,53% |
| 2017,19%,9%,16%,56% |
| 2016,20%,11%,13%,56%",56 |
| "21Characteristic,Other,Games,Video and entertainment,Social and communication |
| 2019,19%,9%,21%,50% |
| 2018,19%,9%,20%,53% |
| 2017,19%,9%,16%,56% |
| 2016,20%,11%,13%,56%",6 |
| "42Characteristic,Good value,Excellent value |
| Netflix,42%,36% |
| Hulu,38%,38% |
| Amazon Primt,38%,37% |
| ""vMPD/""""Skinny Bundle"""""",24%,44% |
| Traditional pay-TV,12%,34%",12 |
| "56Characteristic,Good value,Excellent value |
| Netflix,42%,36% |
| Hulu,38%,38% |
| Amazon Primt,38%,37% |
| ""vMvpd""""""Skinny Bundle"",24%,44% |
| Traditional pay-TV,12%,34%",54 |
| "LeaveCharacteristic,Remain,Leave |
| Christian,42%,58% |
| Muslim,70%,30% |
| Hindu,70%,30% |
| Jewish,46%,54% |
| Sikh,48%,52% |
| Buddhist,51%,49%",Leave |
| "47Characteristic,Remain,Leave |
| Christian,42%,58% |
| Muslim,70%,30% |
| Hindu,70%,30% |
| Jewish,46%,54% |
| Sikh,48%,52% |
| Buddhist,51%,49%",56 |
| "[Facebook users, Twitter users]Characteristic,Trust the retailer less,Trust the retailer more |
| Online shoppers,55%,27% |
| Facebook users,55%,33% |
| Twitter users,52%,37%",Facebook users |
| "Facebook usersCharacteristic,Trust the retailer less,Trust the retailer more |
| Online shoppers,55%,27% |
| Facebook users,55%,33% |
| Twitter users,52%,37%",Online shoppers |
| "2014Characteristic,New Car Market,Used Car Market |
| 2014,43.4,45.1 |
| 2013,36.7,42.7 |
| 2012,32.3,38.1 |
| 2011,29.0,35.7 |
| 2010,28.7,35.0 |
| 2009,28.0,34.2 |
| 2008,28.1,32.4 |
| 2007,33.0,33.3 |
| 2006,32.4,33.9 |
| 2005,32.2,32.3 |
| 2004,32.4,30.0 |
| 2003,33.5,32.0",2014 |
| "4.2Characteristic,New Car Market,Used Car Market |
| 2014,43.4,45.1 |
| 2013,36.7,42.7 |
| 2012,32.3,38.1 |
| 2011,29.0,35.7 |
| 2010,28.7,35.0 |
| 2009,28.0,34.2 |
| 2008,28.1,32.4 |
| 2007,33.0,33.3 |
| 2006,32.4,33.9 |
| 2005,32.2,32.3 |
| 2004,32.4,30.0 |
| 2003,33.5,32.0",4.9 |
| "AsiansCharacteristic,Hispa nics,White, non-Hispanic,African Americans,Asians |
| Once a week or more (net),33%,33%,28%,34% |
| Once a month or more (net),70%,76%,71%,70%",Asians |
| "110Characteristic,Hispanics,White, non-Hispanic,African Americans,Asians |
| Once a week or more (net),33%,33%,28%,34% |
| Once a month or more (net),70%,76%,71%,70%",104 |
| "PDFCharacteristic,Market share |
| Office,70.79% |
| Browser,14.76% |
| Android,7.24% |
| Java,3.61% |
| Adobe Flash,2.53% |
| PDF,1.07%",PDF |
| "55.53Characteristic,Share of downloads |
| Office,70.79% |
| Browser,14.76% |
| Android,7.24% |
| Java,3.61% |
| Adobe Flash,2.53% |
| PDF,1.07%",85.55 |
| "23Characteristic,18-19 years old,20-24 years |
| 1992,9%,23% |
| 2006,16%,28% |
| 2013,21%,41%",23 |
| "20Characteristic,18-19 years old,20-24 years |
| 2013,21%,41% |
| 2006,16%,28% |
| 1992,9%,23%",20 |
| "48.25Characteristic,0-14,15-64,65 and older |
| 2019,42.47%,54.91%,2.62% |
| 2018,43.09%,54.32%,2.58% |
| 2017,43.68%,53.76%,2.55% |
| 2016,44.27%,53.21%,2.52% |
| 2015,44.88%,52.64%,2.48% |
| 2014,45.64%,51.91%,2.45% |
| 2013,46.39%,51.19%,2.42% |
| 2012,47.09%,50.52%,2.39% |
| 2011,47.7%,49.94%,2.35% |
| 2010,48.18%,49.49%,2.33% |
| 2009",48.25 |
| "[42.47%, 54.91]Characteristic,0-14,15-64,65 and older |
| 2019,42.47%,54.91%,2.62% |
| 2018,43.09%,54.32%,2.58% |
| 2017,43.68%,53.76%,2.55% |
| 2016,44.27%,53.21%,2.52% |
| 2015,44.88%,52.64%,2.48% |
| 2014,45.64%,51.91%,2.45% |
| 2013,46.39%,51.19%,2.42% |
| 2012,47.09%,50.52%,2.39% |
| 2011,47.7%,49.94%,2.35% |
| 2010,48.18%,49.49%,2","[42.47, 54.91]" |
| "32.03Characteristic,Sales share |
| Retail,67.97% |
| Wholesale,32.03%",32.03 |
| "35.94Characteristic,Market value |
| Retail,67.97% |
| Wholesale,32.03%",35.94 |
| "2Characteristic,Share of respondents |
| Uncomfortable,38% |
| Moderately comfortable,24% |
| Comfortable,29% |
| Don't know,9% |
| |
| Uncomfortable,38% |
| Moderately comfortable,24% |
| Comfortable,29% |
| Don't know,9%",47 |
| "10901Characteristic,Passenger movements in thousands |
| Dover,10901 |
| Holyhead,1886 |
| Portsmouth,1715 |
| Hull,827 |
| Harwich,691 |
| Tyne,604",10901 |
| "2478.5Characteristic,Passenger movements in thousands |
| Dover,10901 |
| Holyhead,1886 |
| Portsmouth,1715 |
| Hull,827 |
| Harwich,691 |
| Tyne,604",5864 |
| "Over 10.5 years, More than 10.5 years, 6.6 -10.5 years, 4.6 - 6.5 years, 2.6 - 4.5 years, 0 - 2.5 yearsCharacteristic,Price (as a 12 month total) in British pounds |
| ""0 - 2.5 years"",140994 |
| ""2.6 - 4.5 years"",274713 |
| ""4.6 - 6.5 years"",156134 |
| ""6.6 - 10.5 years"",413077 |
| More than 10.5 years,258081",6.6 - 10.5 years |
| "50604Price (as a 12 month total) in British pounds,Sold car age group |
| ""0 - 2.5 years"",140994 |
| ""2.6 - 4.5 years"",274713 |
| ""4.6 - 6.5 years"",156134 |
| ""6.6 - 10.5 years"",413077 |
| ""More than 10.5 years"",258081",399075 |
| "Connected medical deviceCharacteristic,Connected medical device,Other medical device |
| Today,66%,34% |
| In 5 years,58%,42%",Other medical device |
| "60.5Characteristic,Connected medical device,Other medical device |
| Today,66%,34% |
| In 5 years,58%,42%",62 |
| "BlueCharacteristic,Grooms,Brides |
| 2019,30.4,28.8 |
| 2018,30.2,28.5 |
| 2017,30.0,28.4 |
| 2016,30.3,28.3 |
| 2015,30.3,28.2 |
| 2014,30.2,28.2 |
| 2013,30.2,28.0 |
| 2012,30.1,28.0 |
| 2011,30.1,28.0 |
| 2010,30.0,27.7",blue |
| "19.6Characteristic,Grooms,Brides |
| 2019,30.4,28.8 |
| 2018,30.2,28.5 |
| 2017,30.0,28.4 |
| 2016,30.3,28.3 |
| 2015,30.3,28.2 |
| 2014,30.2,28.2 |
| 2013,30.2,28.0 |
| 2012,30.1,28.0 |
| 2011,30.1,28.0 |
| 2010,30.0,27.7",2.7 |
| "Helps me identify trending productsCharacteristic,Strongly agree,Somewhat agree,Neither agree nor disagree,Somewhat disagree,Strongly disagree |
| ""Increases my purchasing confidence"",30%,43%,22%,32%,- |
| ""Improves customer feedback"",30%,41%,25%,32%,- |
| ""Is more interesting than content created by the brand"",26%,39%,29%,42%,- |
| ""Creates a more authentic shopping experience"",24%,43%,28%,32%,- |
| ""Encourages me to engage with a brand"",19%,42%,-,-,62% |
| Helps me identify trending products,16%,32%,40%,9%,-",Helps me identify trending products |
| "39Characteristic,Strongly agree,Somewhat agree,Neither agree nor disagree,Somewhat disagree,Strongly disagree |
| ""Increases my purchasing confidence"",30%,43%,22%,32%,- |
| ""Improves customer feedback"",30%,41%,25%,32%,- |
| ""Is more interesting than content created by the brand"",26%,39%,29%,42%,- |
| ""Creates a more authentic shopping experience"",24%,43%,28%,32%,- |
| ""Encourages me to engage with a brand"",19%,42%,32%,62%,- |
| ""Helps me identify trending products"",16%,32%,40%,9%,3",29.33 |
| "SameCharacteristic,Share of respondents |
| Same,54% |
| More,24% |
| Less,22%",Same |
| "46Characteristic,Share of respondents |
| Same,54% |
| More,24% |
| Less,22%",46 |
| "11.8Characteristic,Percentage of population |
| 2019,11.8% |
| 2018,12.8% |
| 2017,13.3% |
| 2016,14.3% |
| 2015,15.4% |
| 2014,16.4% |
| 2013,16.8% |
| 2012,17% |
| 2011,16.6% |
| 2010,15.8% |
| 2009,14.2% |
| 2008,13.3% |
| 2007,12.4% |
| 2006,13.2% |
| 2005,13.3% |
| 2004,13.4% |
| 2003,13% |
| 2002,13% |
| 2001,12.8% |
| 2000,13.7%",11.8 |
| "2.5Characteristic,Percentage of population |
| 2019,11.8% |
| 2018,12.8% |
| 2017,13.3% |
| 2016,14.3% |
| 2015,15.3% |
| 2014,16.4% |
| 2013,16.8% |
| 2012,16.9% |
| 2011,17% |
| 2010,15.8% |
| 2009,14.2% |
| 2008,13.3% |
| 2007,12.4% |
| 2006,13.6% |
| 2005,13.3% |
| 2004,13.6% |
| 2003,13.4% |
| 2002,13% |
| 2001,12.8% |
| 2000,13.7%",5.2 |
| "EuropeCharacteristic,Number of personal trips in millions |
| Europe,19.3 |
| Africa,2.0 |
| Americas,1.8 |
| Asia and Oceania,1.4",Europe |
| "YesCharacteristic,Number of personal trips in millions |
| Europe,19.3 |
| Africa,2.0 |
| Americas,1.8 |
| Asia and Oceania,1.4",Yes |
| "61 years and olderCharacteristic,18 to 29 years,30 to 45 years,46 to 60 years,61 years and older |
| ""I use it regularly"",11%,6%,5%,1% |
| ""I use it occasionally"",14%,8%,4%,1% |
| ""I have used it once"",13%,5%,3% |
| ""I can imagine using it"",42%,52%,53% |
| ""I won't use it"",21%,20%,29%,36% |
| |
| I use it regularly,11%,5%,6%,1% |
| I use it occasionally,14%,8%,4%,1% |
| I have used it once,13%,11%,5%,3% |
| I can imagine using it,42%,52%,53%,56% |
| I won't use it,21%,20%,29%,36%",32 |
| "40-59 yearsCharacteristic,Men,Women |
| Below 1 year of age,1%,0.9% |
| 1-5 years,4.9%,4.6% |
| 6-14 years,8.3%,7.7% |
| 15-17 years,2.9%,2.6% |
| 18-20 years,3.2%,2.9% |
| 21-24 years,4.8%,4.2% |
| 25-39 years,19.9%,18.3% |
| 40-59 years,28.9%,27.9% |
| 60-64 years,6.8%,6.8% |
| 65 years and older,19.3%,24.1%",40-59 years |
| "6.88Characteristic,Men,Women |
| Below 1 year of age,1%,0.9% |
| 1-5 years,4.9%,4.6% |
| 6-14 years,8.3%,7.7% |
| 15-17 years,2.9%,2.6% |
| 18-20 years,3.2%,2.9% |
| 21-24 years,4.8%,4.2% |
| 25-39 years,19.9%,18.3% |
| 40-59 years,28.9%,27.9% |
| 60-64 years,6.8%,6.8% |
| 65 years and older,19.3%,24.1%",0.6 |
| "5Characteristic,Share of respondents |
| 0 - 5%,21% |
| 5 - 10%,41% |
| 10 - 15%,21% |
| 15 - 20%,12% |
| More than 20%,5%",5 |
| "64Characteristic,Share of respondents |
| 0 - 5%,21% |
| 5 - 10%,41% |
| 10 - 15%,21% |
| 15 - 20%,12% |
| More than 20%,5%",46 |
| "ChineseCharacteristic,Number of live births in thousands |
| Chinese,22.99 |
| Malays,7.82 |
| Indians,4.25 |
| Others,4.21",Chinese |
| "18.4Characteristic,Number of live births in thousands |
| Chinese,22.99 |
| Malays,7.82 |
| Indians,4.25 |
| Others,4.21",12.03 |
| "CashCharacteristic,How consumers can pay,How providers receive payments |
| Cash,44%,46% |
| Account,19%,85% |
| Mobile,52%,54% |
| PayPal,33%,15% |
| Debit/credit card,78%,0%",Mobile |
| "0.120833333Characteristic,How consumers can pay,How providers receive payments |
| Cash,44%,46% |
| Account,19%,85% |
| Mobile,52%,54% |
| PayPal,33%,15% |
| Debit/credit card,78%,0%",2.315 |
| "CompatibilityCharacteristic,Very concerned,Somewhat concerned,Slightly concerned,Not at all concerned |
| High prices,44%,33%,17%,5% |
| ""Hacking/ cybersecurity"",48%,26%,18%,8% |
| Reliability,38%,32%,20%,11% |
| Compatibility,30%,38%,21%,12% |
| ""Technology becoming outdated"",24%,37%,26%,13% |
| Difficulty managing,20%,34%,26%,20%",Very concerned |
| "52Characteristic,Very concerned,Somewhat concerned,Slightly concerned,Not at all concerned |
| High prices,44%,33%,17%,5% |
| ""Hacking/cybersecurity"",48%,26%,18%,8% |
| Reliability,38%,32%,20%,11% |
| Compatibility,30%,38%,21%,12% |
| ""Technology becoming outdated"",24%,37%,26%,13% |
| Difficulty managing,20%,34%,26%,20%",101 |
| "80Characteristic,Domestic visitor,Foreign visitor |
| 2017,80%,20% |
| 2016,79.4%,20.6% |
| 2015,80.9%,19.1% |
| 2014,79.4%,20.6% |
| 2013,79.8%,20.2%",20 |
| "2Characteristic,Domestic visitor,Foreign visitor |
| 2017,80%,20% |
| 2016,79.4%,20.6% |
| 2015,80.9%,19.1% |
| 2014,79.4%,20.6% |
| 2013,79.8%,20.2%",4 |
| "Rx eyeglassesCharacteristic,Share sold online |
| Rx eyeglasses,9.3% |
| Plano sunglasses,8.3%",Rx eyeglasses |
| "17.6Characteristic,Share sold online |
| Rxeyeglasses,9.3% |
| Piano sunglasses,8.3%",17.6 |
| "FemaleCharacteristic,Share of coaches |
| Male,73.5% |
| Female,26.5%",Female |
| "47Characteristic,Distribution of respondents |
| Male,73.5% |
| Female,26.5%",47 |
| "PhilippinesCharacteristic,Number of cases in thousands |
| Quezon City,106.71 |
| Cavite,72.34 |
| City of Manila,66.88 |
| Laguna,58.31 |
| Rizal,55.57",Philippines |
| "42.03Characteristic,Number of cases in thousands |
| Quezon City,106.71 |
| Cavite,72.34 |
| City of Manila,66.88 |
| Laguna,58.31 |
| Rizal,55.57",51.14 |
| "70Characteristic,2008,2009,2010 |
| ""Last week of November"",92,69,79 |
| ""1st week of December"",95,75,66 |
| ""2nd week of December"",94,73,66 |
| ""3rd week of December"",93,74,77 |
| ""4th week of December"",68,70,85",68 |
| "86.5Characteristic,2008,2009,2010 |
| ""Last week of November"",92,69,79 |
| ""1st week of December"",95,75,66 |
| ""2nd week of December"",94,73,66 |
| ""3rd week of December"",93,74,77 |
| ""4th week of December"",68,70,85",74.6 |
| "C1Characteristic,More than 10 times a day,2-10 times a day,Once a day,Less often than daily |
| AB,19%,42%,14%,25% |
| C1,24%,40%,19%,16% |
| C2,25%,41%,17%,17% |
| DE,34%,38%,14%,14%",2-10 times a day |
| "16Characteristic,More than 10 times a day,2-10 times a day,Once a day,Less often than daily |
| AB,19%,42%,14%,25% |
| C1,24%,40%,19%,16% |
| C2,25%,41%,17%,17% |
| DE,34%,38%,14%,14%",25 |
| "2013***Characteristic,2013****,2014 |
| Films or music,50%,73% |
| ""Electronic books, magazines, newspapers or e-learning material"",52%,61% |
| ""Computer software, computer and video games or software upgrades"",66%,91%",2013 |
| "62.5Characteristic,2013***,2014 |
| ""Films or music"",50%,73% |
| ""Electronic books, magazines, newspapers or e-learning material"",52%,61% |
| ""Computer software, computer and video games or software upgrades"",66%,91%",56 |
| |