Using Order Statistics to Estimate Confidence Intervals for Quantile-Based Risk Measures

Abstract
This article shows how to apply the theory of order statistics to estimate confidence intervals for quantile-based risk measures, a class that includes the VaR, expected shortfall, and coherent, convex, and spectral risk measures. The proposed method can be applied to any parametric or nonparametric loss distribution, has a number of advantages relative to alternative methods of estimating confidence intervals for financial risk measures, and is straightforward to implement.
Volume
17
Page
9-14
Number
3
Year
2010
Categories
New Risk Measures
Publications
Journal of Derivatives
Authors
Dowd, K.