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Wiley InterScience

Scandinavian Journal of Statistics

Scandinavian Journal of Statistics

Volume 33 Issue 2, Pages 307 - 335

Published Online: 24 Nov 2005

© 2009 Board of the Foundation of the Scandinavian Journal of Statistics



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Non-parametric Estimation of Tail Dependence
RAFAEL SCHMIDT 1 and ULRICH STADTMÜLLER 2
  1 Department of Economic and Social Statistics, University of Cologne
  2 Department of Number Theory and Probability Theory, University of Ulm
Correspondence to Rafael Schmidt, Seminar für Wirtschafts- und Sozialstatistik, Universität zu Köln, 50923 Köln, Germany.
E-mail: rafael.schmidt@uni-koeln.de
Copyright 2006 Board of the Foundation of the Scandinavian Journal of Statistics.
KEYWORDS
asymptotic normality • copula • empirical copula • non-parametric estimation • strong consistency • tail copula • tail dependence • tail-dependence coefficient

ABSTRACT

Abstract. Dependencies between extreme events (extremal dependencies) are attracting an increasing attention in modern risk management. In practice, the concept of tail dependence represents the current standard to describe the amount of extremal dependence. In theory, multi-variate extreme-value theory turns out to be the natural choice to model the latter dependencies. The present paper embeds tail dependence into the concept of tail copulae which describes the dependence structure in the tail of multivariate distributions but works more generally. Various non-parametric estimators for tail copulae and tail dependence are discussed, and weak convergence, asymptotic normality, and strong consistency of these estimators are shown by means of a functional delta method. Further, weak convergence of a general upper-order rank-statistics for extreme events is investigated and the relationship to tail dependence is provided. A simulation study compares the introduced estimators and two financial data sets were analysed by our methods.


Received December 2003, in final form August 2005

DIGITAL OBJECT IDENTIFIER (DOI)
10.1111/j.1467-9469.2005.00483.x About DOI

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