A comparison of some univariate models for Value-at-Risk and expected shortfall

Abstract
We compare in a backtesting study the performance of univariate models for ValueatRisk (VaR) and expected shortfall based on stable laws and on extreme value theory (EVT). Analyzing these different approaches, we test whether the sum–stability assumption or the max–stability assumption, that respectively imply α–stable laws and Generalized Extreme Value (GEV) distributions, is more suitable for risk management based on VaR and expected shortfall. Our numerical results indicate that α–stable models tend to outperform pure EVT-based methods (especially those obtained by the so-called block maxima method) in the estimation of Value-at-Risk, while a peaks-over-threshold method turns out to be preferable for the estimation of expected shortfall. We also find empirical evidence that some simple semiparametric EVT-based methods perform well in the estimation of VaR.
Volume
10
Page
1043-1075
Number
6
Year
2007
Keywords
Value-at-Risk; expected shortfall, Paretian stable laws; Extreme value theory
Categories
New Risk Measures
Publications
International Journal of Theoretical and Applied Finance
Authors
Marinelli, C.
Rachev, S. T.