This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy-tailed data. To fully exploit the information contained in several samples, we present general weighted pooled Hill estimators of the tail index and weighted pooled Weissman estimators of extreme quantiles calculated through a nonstandard geometric averaging scheme. We develop their large-sample asymptotic theory across a fixed number of samples, covering the general framework of heterogeneous sample sizes with different and asymptotically dependent distributions. Our results include optimal choices of pooling weights based on asymptotic variance and MSE minimization. In the important application of distributed inference, we prove that the v...
International audienceWeissman's extrapolation methodology for estimating extreme quantiles from hea...
Economic problems such as large claims analysis in insurance and value-at-risk in finance, requireas...
This paper suggests a simple method of deriving nonparametric lower bounds of the accuracy of statis...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
This thesis is divided in four chapters. The two first chapters introduce a parametric quantile-base...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
In this work we discuss tail index estimation for heavy-tailed distributions with an emphasis on rob...
Quantiles are a fundamental concept in extreme-value theory. They can be obtained from a minimizatio...
National audienceThe modeling of extreme events arises in many fields such as finance, insurance or ...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
We address the estimation of extreme quantiles of Weibull tail-distributions. Since such quantiles a...
In this paper we are concerned with the analysis of heavy-tailed data when a portion of the extreme...
International audienceWeissman's extrapolation methodology for estimating extreme quantiles from hea...
Economic problems such as large claims analysis in insurance and value-at-risk in finance, requireas...
This paper suggests a simple method of deriving nonparametric lower bounds of the accuracy of statis...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
This thesis is divided in four chapters. The two first chapters introduce a parametric quantile-base...
International audienceWe address the estimation of extreme level curves of heavy-tailed distribution...
In this work we discuss tail index estimation for heavy-tailed distributions with an emphasis on rob...
Quantiles are a fundamental concept in extreme-value theory. They can be obtained from a minimizatio...
National audienceThe modeling of extreme events arises in many fields such as finance, insurance or ...
International audienceThis paper is dedicated to the estimation of extreme quantiles and the tail in...
We address the estimation of extreme quantiles of Weibull tail-distributions. Since such quantiles a...
In this paper we are concerned with the analysis of heavy-tailed data when a portion of the extreme...
International audienceWeissman's extrapolation methodology for estimating extreme quantiles from hea...
Economic problems such as large claims analysis in insurance and value-at-risk in finance, requireas...
This paper suggests a simple method of deriving nonparametric lower bounds of the accuracy of statis...