Article ID Journal Published Year Pages File Type
1156134 Stochastic Processes and their Applications 2009 23 Pages PDF
Abstract

This paper proves weak convergence in DD of the tail empirical process–the renormalized extreme tail of the empirical process–for a large class of stationary sequences. The conditions needed for convergence are (i) moment restrictions on the amount of clustering of extremes, (ii) restrictions on long range dependence (absolute regularity or strong mixing), and (iii) convergence of the covariance function. We further show how the limit process is changed if exceedances of a nonrandom level are replaced by exceedances of a high quantile of the observations. Weak convergence of the tail empirical process is one key to asymptotics for extreme value statistics and its wide range of applications, from geoscience to finance.

Related Topics
Physical Sciences and Engineering Mathematics Mathematics (General)
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