학술논문

A refined Weissman estimator for extreme quantiles
Document Type
Original Paper
Source
Extremes: Statistical Theory and Applications in Science, Engineering and Economics. 26(3):545-572
Subject
Extreme quantile
Bias reduction
Heavy-tailed distribution
Extreme-value statistics
Asymptotic normality
60G70
62G32
62G20
Language
English
ISSN
1386-1999
1572-915X
Abstract
Weissman extrapolation methodology for estimating extreme quantiles from heavy-tailed distributions is based on two estimators: an order statistic to estimate an intermediate quantile and an estimator of the tail-index. The common practice is to select the same intermediate sequence for both estimators. In this work, we show how an adapted choice of two different intermediate sequences leads to a reduction of the asymptotic bias associated with the resulting refined Weissman estimator. The asymptotic normality of the latter estimator is established and a data-driven method is introduced for the practical selection of the intermediate sequences. Our approach is compared to the Weissman estimator and to six bias reduced estimators of extreme quantiles on a large scale simulation study. It appears that the refined Weissman estimator outperforms its competitors in a wide variety of situations, especially in the challenging high bias cases. Finally, an illustration on an actuarial real data set is provided.