Predicting Stock Market Crash with Bayesian Generalised Pareto Regression
Sourish Das

TL;DR
This paper introduces a Bayesian Generalised Pareto Regression model that dynamically links tail risk to market covariates, improving crash prediction accuracy in Indian equity markets by incorporating global and domestic volatility measures.
Contribution
The paper develops a novel Bayesian GPR framework that integrates market covariates into tail risk modeling, with empirical validation showing superior predictive performance and interpretability.
Findings
Tail risk increases with higher market volatility.
S&P 500 and gold volatilities significantly improve crash prediction.
Cauchy prior offers the best balance between accuracy and simplicity.
Abstract
This paper develops a Bayesian Generalised Pareto Regression (GPR) model to forecast extreme losses in Indian equity markets, with a focus on the Nifty 50 index. Extreme negative returns, though rare, can cause significant financial disruption, and accurate modelling of such events is essential for effective risk management. Traditional Generalised Pareto Distribution (GPD) models often ignore market conditions; in contrast, our framework links the scale parameter to covariates using a log-linear function, allowing tail risk to respond dynamically to market volatility. We examine four prior choices for Bayesian regularisation of regression coefficients: Cauchy, Lasso (Laplace), Ridge (Gaussian), and Zellner's g-prior. Simulation results suggest that the Cauchy prior delivers the best trade-off between predictive accuracy and model simplicity, achieving the lowest RMSE, AIC, and BIC…
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