Extreme versions of Wang risk measures and their estimation for heavy-tailed distributions

Abstract : Among the many possible ways to study the right tail of a real-valued random variable, a particularly general one is given by considering the family of its Wang distortion risk measures. This class of risk measures encompasses various interesting indicators, such as the widely used Value-at-Risk and Tail Value-at-Risk, which are especially popular in actuarial science, for instance. In this paper, we first build simple extreme analogues of Wang distortion risk measures and we show how this makes it possible to consider many standard measures of extreme risk, including the usual extreme Value-at-Risk or Tail-Value-at-Risk, as well as the recently introduced extreme Conditional Tail Moment, in a unified framework. We then introduce adapted estimators when the random variable of interest has a heavy-tailed distribution and we prove their asymptotic normality. The finite sample performance of our estimators is assessed on a simulation study and we showcase our techniques on two sets of real data.
Type de document :
Pré-publication, Document de travail
Liste complète des métadonnées

Contributeur : Gilles Stupfler <>
Soumis le : vendredi 25 mars 2016 - 11:55:34
Dernière modification le : jeudi 23 janvier 2020 - 18:22:11
Archivage à long terme le : dimanche 26 juin 2016 - 15:14:44


Fichiers produits par l'(les) auteur(s)


  • HAL Id : hal-01145417, version 2


Jonathan El Methni, Gilles Stupfler. Extreme versions of Wang risk measures and their estimation for heavy-tailed distributions. 2015. ⟨hal-01145417v2⟩



Consultations de la notice


Téléchargements de fichiers