Nonparametric estimation of the dependence function for a multivariate extreme value distribution
Understanding and modeling dependence structures for multivariate extreme values are of interest in a number of application areas. One of the well-known approaches is to investigate the Pickands dependence function. In the bivariate setting, there exist several estimators for estimating the Pickands dependence function which assume known marginal distributions [J. Pickands, Multivariate extreme value distributions, Bull. Internat. Statist. Inst., 49 (1981) 859-878; P. Deheuvels, On the limiting behavior of the Pickands estimator for bivariate extreme-value distributions, Statist. Probab. Lett. 12 (1991) 429-439; P. Hall, N. Tajvidi, Distribution and dependence-function estimation for bivariate extreme-value distributions, Bernoulli 6 (2000) 835-844; P. Capéraà, A.-L. Fougères, C. Genest, A nonparametric estimation procedure for bivariate extreme value copulas, Biometrika 84 (1997) 567-577]. In this paper, we generalize the bivariate results to p-variate multivariate extreme value distributions with p[greater-or-equal, slanted]2. We demonstrate that the proposed estimators are consistent and asymptotically normal as well as have excellent small sample behavior.
Year of publication: |
2008
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Authors: | Zhang, Dabao ; Wells, Martin T. ; Peng, Liang |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 99.2008, 4, p. 577-588
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Publisher: |
Elsevier |
Keywords: | Copulas Dependence function Empirical distribution Gaussian process Multivariate extreme value distribution |
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