brazil-2026-electoral-divergence / DATA_DICTIONARY.md
AFOS-Analytics1's picture
Add sample-scope classification (scope + scope_source) to TSE registry: national vs state inferred from declared universe (methodology/sampling plan/municipality), since TSE files all presidential polls under BR regardless of sample reach. Documented in DATA_DICTIONARY as AFOS-derived, auditable, never guessed (unknown when no universe declared).
5584693 verified
|
Raw
History Blame
14.6 kB
# Data Dictionary — AFOS Brazil 2026 Electoral Divergence
Every file, every column, with type, unit, and provenance. Values are never imputed or smoothed: a missing value is left **blank**, not filled.
---
## `polls/tse-registry.csv` / `.json`
Official **TSE poll-registration registry** for the 2026 presidential cycle, built **directly from the TSE Open Data file** `pesquisa_eleitoral_2026_BRASIL.csv` ([dadosabertos.tse.jus.br](https://dadosabertos.tse.jus.br)). One row per registered presidential poll (**365** at the latest snapshot; the count grows as new polls are registered). This is the **full set of public registration fields** — every poll registered in Brazil must, by **Lei 9.504/1997 art. 33** (and Resolução TSE 23.600/2019), disclose its methodology, sampling/weighting design, cost, contracting party and responsible statistician *before* release. The registry carries that design; it does **not** carry per-candidate results (the institute publishes those) nor the demographic crosstabs *of the results*.
| Column | Type | Unit / format | Notes |
|--------|------|---------------|-------|
| `register_tse` | string | e.g. `BR042272026` | Official TSE registration number (`NR_PROTOCOLO_REGISTRO`). |
| `registration_date` | date | `YYYY-MM-DD` | Date filed with the TSE (`DT_REGISTRO`). |
| `own_poll` | string | `S` \| `N` | `S` = institute's own poll; `N` = commissioned by a third party (`ST_PESQUISA_PROPRIA`). |
| `cnpj` | string | 14 digits | Polling company's CNPJ (`NR_CNPJ_EMPRESA`). |
| `institute` | string | — | Polling company, legal name (`NM_EMPRESA`). |
| `institute_trade_name` | string | — | Trade name, when declared (`NM_EMPRESA_FANTASIA`). |
| `office` | string | — | Office polled (`DS_CARGO`) — filtered to *Presidente*. |
| `field_start` / `field_end` | date | `YYYY-MM-DD` | Fieldwork window (`DT_INICIO/FIM_PESQUISA`). |
| `publication_date` | date | `YYYY-MM-DD` | Planned/actual publication date (`DT_DIVULGACAO`; may be future for registered-but-unreleased polls). |
| `sample_size` | integer | respondents | Declared sample size (`QT_ENTREVISTADO`). |
| `conre` | string | — | Regional Statistics Council registration of the responsible statistician (`CD_CONRE`). |
| `statistician` | string | — | Responsible statistician, named (`NM_ESTATISTICO_RESP`). |
| `cost_brl` | number | BRL | Declared cost of the poll (`VR_PESQUISA`). |
| `methodology` | string (long) | free text | **Full** methodology description (`DS_METODOLOGIA_PESQUISA`) — survey type, mode (in-person/phone), instrument. Up to ~3.8k chars; **not truncated**. |
| `sampling_plan` | string (long) | free text | **Full** sampling/weighting design (`DS_PLANO_AMOSTRAL`) — universe, multi-stage cluster design, **and the demographic/geographic quota design (sex, age, education, income, region) with the exact quota percentages** when declared. Up to ~4k chars; **not truncated**. This is the registration-level weighting *design*. |
| `control_system` | string (long) | free text | Internal field-control/quality-control system (`DS_SISTEMA_CONTROLE`). |
| `municipality_data` | string | free text | Municipality-level breakdown declaration (`DS_DADO_MUNICIPIO`), when present. |
| `uf` | string | 2-letter UF or `BR` | Federative unit (`SG_UF`). **Always `BR`** for presidential-office registrations — the TSE files all presidential polls under the national jurisdiction regardless of where the sample was drawn (see `scope`). |
| `electoral_unit` | string | — | Electoral unit name (`NM_UE`) — `BRASIL` for all presidential registrations. |
| `scope` | string | `national` \| `state` \| `unknown` | **AFOS-derived** sample-coverage label (not a native TSE field). `national` = declared universe spans more than one UF / the country; `state` = restricted to a single UF (a single municipality is within one UF, so municipal polls are `state`); `unknown` = the registration text does not declare a universe (left honest, never guessed). See provenance note below. |
| `scope_source` | string | `methodology` \| `sampling_plan` \| `dado_municipio` \| `none` | Which registration field the `scope` was inferred from — for auditability/reproducibility. `none``scope = unknown`. |
> ⚠️ **"Registered" ≠ "published".** A poll in the registry has been filed with the TSE; it may be delayed or never released. Confirm actual release against a primary source before citing numbers.
>
> 🔎 **What the TSE publishes vs not.** Public (in this file): methodology, sampling/weighting **design**, cost, contracting party, named statistician, fieldwork dates, sample size. **Not** in the open-data file: the per-candidate **results** and their demographic crosstabs (published by the institute, not the TSE), and the **complete questionnaire** (art. 33 VI) — that is an attachment in the TSE *PesqEle* system, not in the open-data CSV.
>
> 🧭 **`scope` is AFOS-inferred, not a TSE classification.** The TSE does **not** label a poll's *sample* as national or state. It registers by the *office* polled: any poll asking about **Presidente** is filed under the national jurisdiction (`SG_UF=BR`, `NM_UE=BRASIL`) even when the sample covers a single state. The actual geographic reach lives only in the institute's free-text **methodology / sampling plan / municipality declaration**. `scope` is AFOS's transparent inference from that text: **`national`** when the declared universe spans more than one UF / the country (signals: "eleitorado brasileiro", "residente no Brasil", "todas as regiões do Brasil", "N unidades da federação", "todo o país", "âmbito nacional"); **`state`** when restricted to one UF (a municipality is within one UF → `state`); **`unknown`** when no universe is declared. `scope_source` records which field the decision came from. This is a documented derivation, **not** a field the TSE certifies — verify against the registration text (included in this file) for any rigorous use.
---
## `polls/national-poll-results-firstround.csv`
Published **first-round** results, long format (one row per candidate × scenario × poll).
| Column | Type | Notes |
|--------|------|-------|
| `poll_id` | string | TSE register if available, else `institute-date`. |
| `register_tse` | string | TSE registration number (blank if unregistered/commissioned). |
| `institute` | string | Polling institute. |
| `poll_date` | date | Publication date (`YYYY-MM-DD`). |
| `field_dates` | string | Fieldwork window as published. |
| `sample` | integer | Sample size. |
| `margin_pp` | number | Margin of error, percentage points. |
| `method` | string | e.g. "Pesquisa nacional", "Telefônica". |
| `scenario` | string | Scenario label (some polls test multiple candidate sets). |
| `candidate` | string | Candidate name. |
| `party` | string | Party, parsed from the candidate label. |
| `percent` | number | Voting intention, %. |
## `polls/national-poll-results-secondround.csv`
Published **runoff** matchups.
| Column | Type | Notes |
|--------|------|-------|
| `poll_id`, `register_tse`, `institute`, `poll_date` | — | As above. |
| `matchup` | string | e.g. "Lula vs Flávio". |
| `candidate1` / `percent1` | string / number | First candidate and %. |
| `candidate2` / `percent2` | string / number | Second candidate and %. |
## `polls/national-polls.json`
Full structured array of the **22** deduplicated national polls **with results** (first round + runoff scenarios + methodology + sources), reconstructed from the git history of the AFOS dashboard's `polls-data.json`. Deduplicated by TSE register (fallback: institute + date), keeping the most complete version of each poll.
Each poll carries a **`tse_registration`** object linking it to its public TSE registration (from `tse-registry` above):
| Field | Notes |
|-------|-------|
| `register_tse` | Matched TSE protocol. |
| `matched_by` | `protocol` = exact protocol match (8/22); `institute+date(±Nd)` = nearest same-institute registration within N days (14/22). For institute+date matches the attached **methodology/sampling design is the institute's standard** (stable across waves), not a claim of identical protocol. |
| `cnpj`, `institute_full`, `statistician`, `conre`, `cost_brl`, `own_poll` | Registration metadata. |
| `methodology`, `sampling_plan`, `control_system` | Full registration text (see `tse-registry` schema). `null` when no confident match. |
---
## `data/market-odds-timeseries.csv`
Polymarket presidential **winner** odds per candidate, daily.
| Column | Type | Notes |
|--------|------|-------|
| `date` | date | `YYYY-MM-DD`. |
| `candidate` | string | First-name key (e.g. "Lula", "Flávio"). |
| `party` | string | Party. |
| `polymarket_pct` | number | Implied probability, %. |
| `volume_usd_m` | number | Cumulative traded volume, USD millions. Blank for legacy snapshots (pre-2026-05-22) that did not record volume. |
> Extracted by regex from each daily `analysis-criteriosa.json` `quadroComparativo[].m` field — no value is fabricated; candidates without a parseable market price are omitted.
## `data/divergence-timeseries.csv`
**Market × poll divergence** — the dataset's namesake signal. Each national-poll first-round result is joined to the candidate's Polymarket odds on the poll's date.
| Column | Type | Notes |
|--------|------|-------|
| `poll_date` | date | Poll publication date. |
| `institute` | string | Polling institute. |
| `register_tse` | string | TSE register. |
| `candidate` | string | Canonical candidate key. |
| `poll_pct` | number | Poll voting intention, %. |
| `polymarket_pct` | number | Market implied probability on `polymarket_date`, %. |
| `polymarket_date` | date | Market date used: nearest available **on or before** `poll_date`. |
| `divergence_pp` | number | `polymarket_pct − poll_pct`, percentage points. |
> **Interpretation caveat:** a poll reports first-round *vote share*; a Polymarket contract prices *probability of winning the election*. The two are different quantities — `divergence_pp` measures the gap between the market's win-probability and the poll's vote share, which is the spread AFOS tracks editorially, **not** a like-for-like error metric. Candidate names are normalized across sources via an explicit mapping (see `scripts/export-hf-dataset.mjs`).
## `data/divergence-{date}.csv`
Per-day snapshot: `date, candidate, polymarket_pct, poll_pct, divergence_pp`.
---
## `snapshots/analysis-criteriosa/{date}.json`
Daily structured analysis. Key fields: `updatedAt`, `subtitle`, `cruzamento` (the day's cross-source reading), `candidates[]` (per-candidate `header`/`analise`/`fortes`/`fracos`), and `quadroComparativo[]` — the comparison table where `m` = market price string, `p` = poll mentions, `t` = trend reading, `s` = sources.
## `snapshots/analysis-cards/{date}.json`
Thematic cards: `sentimento`, `inss`, `bancoMaster`, `stf` (incl. impeachment market %).
## `news/news-{date}.json`
`{ date, count, items[] }`, where each item is `{ source, title, url, published }`. **Links only — no article bodies.**
---
## Research enrichment (2026-06-13) — poll-centric analytical layers
Three additions for methodological/research use. They **add** depth; nothing in the base files changed in meaning.
### New fields on each poll in `polls/national-polls.json`
| Field | Type | Notes |
|-------|------|-------|
| `field_window` | object/null | `{ start, end }` — fieldwork dates from the poll's TSE registration. |
| `field_midpoint` | date | Midpoint of the fieldwork window. A poll is best dated by its field midpoint, not its publication date. |
| `dating_source` | string | `field_midpoint` (all 22 current polls), `publication_date` (fallback), or `unavailable`. |
| `days_to_first_round` | int | Days from `field_midpoint` to the 1st round (2026-10-04). Positive = before election. |
| `days_to_runoff` | int | Days from `field_midpoint` to the runoff (2026-10-25). |
| `tse_registration.sample_design` | object | Sample composition/weighting (layer A) — see below. |
### `tse_registration.sample_design` — sample-design demographics (layer A)
Parsed from the TSE `sampling_plan` registration text. **This is the declared composition/weighting of the SAMPLE (quota frame), NOT vote-by-demographic crosstabs (layer B).** Layer B is not part of Brazil's TSE open data — institutes publish it separately — so it is intentionally absent here.
| Field | Type | Notes |
|-------|------|-------|
| `quota_detail_level` | string | `full_percentages` (institute declared quotas with %; 12/22 polls), `mentioned_no_pct` (controls named, no % in registry; 10/22), or `not_in_sampling_text`. |
| `control_variables` | object | Booleans for `sex`, `age`, `education`, `income`, `region` — whether the design controls/weights on each. |
| `sex_quota` | object/null | `{ male_pct, female_pct }` where declared. |
| `age_quota` / `education_quota` / `income_quota` | array/null | `[{ label, pct }]` where declared (each declared dimension sums to ~100%). |
> Best-effort extraction from free text; `null` where the institute did not declare structured percentages. No value is fabricated.
### `polls/sample-demographics.csv`
Flat (long) view of layer A: `poll_id, register_tse, institute, poll_date, field_midpoint, dimension, category, pct, quota_detail_level`. One row per declared (dimension, category). Polls that only name controls without % carry a single `(declared, no % in registry)` row per dimension — explicit coverage, not a hidden gap.
### `data/poll-divergence.csv`
Poll-level market×poll pairing **anchored on the field midpoint** (vs the publication-date-anchored `divergence-timeseries.csv`).
| Column | Type | Notes |
|--------|------|-------|
| `poll_id, register_tse, institute, poll_date, field_midpoint, days_to_first_round, scenario, candidate` | — | Poll/candidate identity. |
| `poll_pct` | number | First-round vote share, %. |
| `polymarket_pct` | number | Market implied win-probability on `polymarket_date`, %. |
| `polymarket_date` | date | Nearest market date **on or before** the field midpoint (no fabricated contemporaneity; polls predating the market series start, 2026-04-17, have no row). |
| `naive_gap_pp` | number | `polymarket_pct − poll_pct`, percentage points. |
| `gap_type` | string | Always `naive_winprob_minus_voteshare` — a **flag, not a metric**: the market prices **P(win)** while the poll reports **vote share**, so the gap is **not scale-reconciled**. Reconciling the scales (e.g. mapping vote share to a win probability) is a modeling choice left to the researcher. |