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End-to-End Python implementation of Regime-Weighted Conformal (RWC) prediction for sequential VaR control in nonstationary financial markets (Schmitt, 2026). Combines kernel-based regime similarity with exponential time decay to calibrate distribution-free risk bounds. CRSP data validation, GBDT quantile forecasting, and rigorous backtesting.
End-to-End replication of Schmitt's (2026) Market Stress Probability Index. Implements cross-sectional fragility signal extraction, dynamic stress labeling via volatility quantiles and Lasso-Logit forecasting. Includes Jordà local projections for structural impulse response analysis. Strict real-time discipline & expanding-window training.