Regression-type analysis for multivariate extreme values

被引:0
|
作者
Miguel de Carvalho
Alina Kumukova
Gonçalo dos Reis
机构
[1] University of Edinburgh,School of Mathematics
[2] University of Edinburgh,Maxwell Institute for Mathematical Sciences, School of Mathematics
[3] Centro de Matemática e Aplicações (CMA),undefined
[4] FCT,undefined
[5] UNL,undefined
来源
Extremes | 2022年 / 25卷
关键词
Angular measure; Bernstein polynomials; Extreme value copula; Joint extremes; Multivariate extreme value distribution; Quantile regression; Statistics of extremes;
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中图分类号
学科分类号
摘要
This paper devises a regression-type model for the situation where both the response and covariates are extreme. The proposed approach is designed for the setting where the response and covariates are modeled as multivariate extreme values, and thus contrarily to standard regression methods it takes into account the key fact that the limiting distribution of suitably standardized componentwise maxima is an extreme value copula. An important target in the proposed framework is the regression manifold, which consists of a family of regression lines obeying the latter asymptotic result. To learn about the proposed model from data, we employ a Bernstein polynomial prior on the space of angular densities which leads to an induced prior on the space of regression manifolds. Numerical studies suggest a good performance of the proposed methods, and a finance real-data illustration reveals interesting aspects on the conditional risk of extreme losses in two leading international stock markets.
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页码:595 / 622
页数:27
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