Confidence Intervals for Conditional Tail Risk Measures in ARMA-GARCH Models
收藏DataCite Commons2020-09-01 更新2024-07-25 收录
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https://tandf.figshare.com/articles/dataset/Confidence_Intervals_for_Conditional_Tail_Risk_Measures_in_ARMA-GARCH_Models/5573506/1
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资源简介:
ARMA-GARCH models are widely used to model the conditional mean and conditional variance dynamics of returns on risky assets. Empirical results suggest heavy-tailed innovations with positive extreme value index for these models. Hence, one may use extreme value theory to estimate extreme quantiles of residuals. Using weak convergence of the weighted sequential tail empirical process of the residuals, we derive the limiting distribution of extreme conditional Value-at-Risk (CVaR) and conditional Expected Shortfall (CES) estimates for a wide range of extreme value index estimators. To construct confidence intervals we propose to use self-normalization. This leads to improved coverage vis-à-vis the normal approximation, while delivering slightly wider confidence intervals. A data-driven choice of the number of upper order statistics in the estimation is suggested and shown to work well in simulations. An application to stock index returns documents the improvements of CVaR and CES forecasts.
提供机构:
Taylor & Francis
创建时间:
2017-11-06



