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Hidden Regular Variation: Detection and Estimation

27 January 2010
A. Mitra
Sidney I. Resnick
ArXiv (abs)PDFHTML
Abstract

Hidden regular variation defines a subfamily of distributions satisfying multivariate regular variation on E=[0,∞]d\{(0,0,...,0)}\mathbb{E} = [0, \infty]^d \backslash \{(0,0, ..., 0) \} E=[0,∞]d\{(0,0,...,0)} and models another regular variation on the sub-cone E(2)=E\∪i=1dLi\mathbb{E}^{(2)} = \mathbb{E} \backslash \cup_{i=1}^d \mathbb{L}_iE(2)=E\∪i=1d​Li​, where Li\mathbb{L}_iLi​ is the iii-th axis. We extend the concept of hidden regular variation to sub-cones of E(2)\mathbb{E}^{(2)}E(2) as well. We suggest a procedure of detecting the presence of hidden regular variation, and if it exists, propose a method of estimating the limit measure exploiting its semi-parametric structure. We exhibit examples where hidden regular variation yields better estimates of probabilities of risk sets.

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