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arXiv:1108.0920 [math.PR]AbstractReferencesReviewsResources

The multivariate Piecing-Together approach revisited

Stefan Aulbach, Michael Falk, Martin Hofmann

Published 2011-08-03, updated 2012-02-07Version 4

The univariate Piecing-Together approach (PT) fits a univariate generalized Pareto distribution (GPD) to the upper tail of a given distribution function in a continuous manner. A multivariate extension was established by Aulbach et al. (2012a): The upper tail of a given copula C is cut off and replaced by a multivariate GPD-copula in a continuous manner, yielding a new copula called a PT-copula. Then each margin of this PT-copula is transformed by a given univariate distribution function. This provides a multivariate distribution function with prescribed margins, whose copula is a GPD-copula that coincides in its central part with C. In addition to Aulbach et al. (2012a), we achieve in the present paper an exact representation of the PT-copula's upper tail, giving further insight into the multivariate PT approach. A variant based on the empirical copula is also added. Furthermore our findings enable us to establish a functional PT version as well.

Comments: 12 pages, 1 figure. To appear in the Journal of Multivariate Analysis
Journal: J. Multivariate Anal. 110 (2012) 161-170
Categories: math.PR, math.ST, stat.TH
Subjects: 62G32, 62H99, 60G70
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