65th ISI World Statistics Congress 2025

65th ISI World Statistics Congress 2025

High dimensional inference for extreme value indices

Author

CZ
Chen Zhou

Co-author

  • L
    Liujun Chen

Conference

65th ISI World Statistics Congress 2025

Format: IPS Abstract - WSC 2025

Keywords: extreme-value-statistics, heavy-tailed

Session: IPS 769 - Heterogeneous Data Extremes

Tuesday 7 October 10:50 a.m. - 12:30 p.m. (Europe/Amsterdam)

Abstract

When applying multivariate extreme values statistics to analyze tail risk in compound events defined by a multivariate random vector, one often assumes that all dimensions share the same extreme value index. While such an assumption can be tested using a Wald-type test, the performance of such a test deteriorates as the dimensionality increases.

This paper introduces a novel test for testing extreme value indices in a high dimensional setting. We show the asymptotic behavior of the test statistic and conduct simulation studies to evaluate its finite sample performance. The proposed test significantly outperforms existing methods in high dimensional settings. We apply this test to examine two datasets previously assumed to have identical extreme value indices across all dimensions.