Article

Tail expectile process and risk assessment

Abdelaati Daouia, Stéphane Girard, and Gilles Stupfler

Abstract

Expectiles dene a least squares analogue of quantiles. They are determined by tail expectations rather than tail probabilities. For this reason and many other theoretical and practical merits, expectiles have recently received a lot of attention, especially in actuarial and nancial risk management. Their estimation, however, typically requires to consider non-explicit asymmetric least squares estimates rather than the traditional order statistics used for quantile estimation. This makes the study of the tail expectile process a lot harder than that of the standard tail quantile process. Under the challenging model of heavy-tailed distributions, we derive joint weighted Gaussian approximations of the tail empirical expectile and quantile processes. We then use this powerful result to introduce and study new estimators of extreme expectiles and the standard quantile-based expected shortfall, as well as a novel expectile-based form of expected shortfall. Our estimators are built on general weighted combinations of both top order statistics and asymmetric least squares estimates. Some numerical simulations and applications to actuarial and nancial data are provided.

Keywords

Asymmetric least squares; Coherent risk measures; Expected shortfall; Expectile; Extrapolation; Extremes; Heavy tails; Tail index;

Replaces

Abdelaati Daouia, Stéphane Girard, and Gilles Stupfler, Tail expectile process and risk assessment, TSE Working Paper, n. 18-944, August 2018.

Reference

Abdelaati Daouia, Stéphane Girard, and Gilles Stupfler, Tail expectile process and risk assessment, Bernoulli, vol. 26, n. 1, January 2020, pp. 531–556.

See also

Published in

Bernoulli, vol. 26, n. 1, January 2020, pp. 531–556