--- license: apache-2.0 tags: - healthcare - hospital-readmission - fairness-evaluation - bias-detection - ai-ethics --- # Hospital Readmission Risk - Phase 5: Fairness Evaluation Results This repository contains the results from Phase 5: Fairness Evaluation & Deployment Readiness. ## Contents ### Outputs - `outputs/fairness_report.json`: Comprehensive fairness evaluation report - `outputs/group_metrics_*.csv`: Performance metrics by demographic group (race, gender, age) - `outputs/statistical_tests.json`: Statistical significance tests for bias detection - `outputs/risk_categories_*.csv`: Risk category distribution by demographic group ## Fairness Metrics Evaluated ### Demographic Parity Measures if intervention rate is similar across demographic groups (±5% tolerance). ### Equalized Odds Measures if True Positive Rate (TPR) and False Positive Rate (FPR) are similar across groups (±5% tolerance). ### Equal Opportunity Measures if True Positive Rate (TPR) is similar across groups (±5% tolerance). ## Statistical Tests - **Chi-square test**: Tests independence of intervention rate and demographic group - **Two-proportion z-test**: Tests TPR/FPR differences between groups ## Model Information - **Model**: Gradient Boosting (LightGBM) with Platt Calibration - **Optimal Threshold**: From Phase 4 ROI analysis - **Test Set**: 15,265 patients - **Demographics**: Race (6 categories), Gender (3 categories), Age (10 ranges) ## Usage These results can be used for: - Assessing model fairness before deployment - Identifying potential bias in predictions - Determining if bias mitigation is needed - Creating model cards with fairness documentation - Meeting regulatory requirements for AI fairness ## Deployment Readiness Review the fairness report to determine if the model is ready for deployment or if bias mitigation strategies are needed. ## Citation If you use these results, please cite the hospital readmission risk prediction project.