Accurate prediction of risk measures such as Value at Risk (VaR) and Expected Shortfall (ES) requires precise estimation of the tail of the predictive distribution. Two novel concepts are introduced that offer a specific focus on this part of the predictive density: the censored posterior, a posterior in which the likelihood is replaced by the censored likelihood; and the censored predictive likelihood, which is used for Bayesian Model Averaging. We perform extensive experiments involving simulated and empirical data. Our results show the ability of these new approaches to outperform the standard posterior and traditional Bayesian Model Averaging techniques in applications of Value-at-Risk prediction in GARCH models.

, , , , ,
, , , , ,
Tinbergen Institute
hdl.handle.net/1765/39847
Tinbergen Institute Discussion Paper Series
Discussion paper / Tinbergen Institute
Erasmus School of Economics

Gatarek, L., Hoogerheide, L., & Hooning, K. (2013). Censored Posterior and Predictive
Likelihood in Bayesian Left-Tail
Prediction for Accurate Value at Risk
Estimation (No. TI 13-060/III ). Discussion paper / Tinbergen Institute (pp. 1–27). Retrieved from http://hdl.handle.net/1765/39847