The paper suggests a simple method of deriving minimax lower bounds to the accuracy of statistical inference on heavy tails. A well-known result by Hall and Welsh (Ann. Statist. 12 (1984) 1079-1084) states that if α^n is an estimator of the tail index αP and {zn} is a sequence of positive numbers such that supP∈DrP(|α^n−αP|≥zn)→0, where Dr is a certain class of heavy-tailed distributions, then zn≫n−r. The paper presents a non-asymptotic lower bound to the probabilities P(|α^n−αP|≥zn). We also establish non-uniform lower bounds to the accuracy of tail constant and extreme quantiles estimation. The results reveal that normalising sequences of robust estimators should depend in a specific way on the tail index and the tail constant
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
This thesis focuses on the analysis of heavy-tailed distributions, which are widely applied to model...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
The paper suggests a simple method of deriving minimax lower bounds to the accuracy of statistical i...
This paper suggests a simple method of deriving nonparametric lower bounds of the accuracy of statis...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
In this paper, a novel approach to the problem of estimating the heavy-tail exponent α >; 0 of a dis...
Motivated by theoretical similarities between the classical Hill estimator of the tail index of a he...
International audienceBayesian estimation of the tail index of a heavy-tailed distribution is addres...
In this work we discuss tail index estimation for heavy-tailed distributions with an emphasis on rob...
Most applications of statistics to science and engineering are based on the assumption that the corr...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
The goal of this paper is to provide estimators of the tail index and extreme quantiles of a heavy-t...
The selection of upper order statistics in tail estimation is notoriously difficult. Most methods ar...
This paper focuses on the analysis of efficiency, peakedness, and majorization properties of linear ...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
This thesis focuses on the analysis of heavy-tailed distributions, which are widely applied to model...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
The paper suggests a simple method of deriving minimax lower bounds to the accuracy of statistical i...
This paper suggests a simple method of deriving nonparametric lower bounds of the accuracy of statis...
International audienceThe estimation of extreme quantiles requires adapted methods to extrapolate be...
In this paper, a novel approach to the problem of estimating the heavy-tail exponent α >; 0 of a dis...
Motivated by theoretical similarities between the classical Hill estimator of the tail index of a he...
International audienceBayesian estimation of the tail index of a heavy-tailed distribution is addres...
In this work we discuss tail index estimation for heavy-tailed distributions with an emphasis on rob...
Most applications of statistics to science and engineering are based on the assumption that the corr...
This paper investigates pooling strategies for tail index and extreme quantile estimation from heavy...
The goal of this paper is to provide estimators of the tail index and extreme quantiles of a heavy-t...
The selection of upper order statistics in tail estimation is notoriously difficult. Most methods ar...
This paper focuses on the analysis of efficiency, peakedness, and majorization properties of linear ...
International audienceFor heavy-tailed distributions, the so-called tail index is an important param...
This thesis focuses on the analysis of heavy-tailed distributions, which are widely applied to model...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...