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On Smooth Statistical Tail Functionals
Authors:Holger Drees
Institution:University of Cologne
Abstract:Many estimators of the extreme value index of a distribution function F that are based on a certain number k n of largest order statistics can be represented as a statistical tail function al, that is a functional T applied to the empirical tail quantile function Q n. We study the asymptotic behaviour of such estimators with a scale and location invariant functional T under weak second order conditions on F . For that purpose first a new approximation of the empirical tail quantile function is established. As a consequence we obtain weak consistency and asymptotic normality of T ( Q n) if T is continuous and Hadamard differentiable, respectively, at the upper quantile function of a generalized Pareto distribution and k pn tends to infinity sufficiently slowly. Then we investigate the asymptotic variance and bias. In particular, those functionals T re characterized that lead to an estimator with minimal asymptotic variance. Finally, we introduce a method to construct estimators of the extreme value index with a made-to-order asymptotic behaviour
Keywords:adaptive estimator  empirical tail quantile function  extreme value distribution  extreme value index  Hadamard differentiability  statistical functional  strong approximation
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