Tail copula estimation for heteroscedastic extremes

John H.J. Einmahl*, Chen Zhou

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Consider independent multivariate random vectors that follow the same copula, but where each marginal distribution is allowed to be non-stationary. This non-stationarity is for each marginal governed by a scedasis function that is the same for all marginals. The usual rank-based estimator of the stable tail dependence function, or, when specialized to bivariate random vectors, the corresponding estimator of the tail copula, is shown to be asymptotic normal. Notably, the heteroscedastic marginals do not affect the limiting process. Next, in the bivariate setup, nonparametric tests for testing whether the scedasis functions for both marginals are the same are developed. Detailed simulations show the good performance of the estimator for the tail dependence coefficient as well as that of the new tests. In particular, novel asymptotic confidence intervals for the tail dependence coefficient are presented and their good finite-sample behavior is shown. Finally an application to the S&P500 and Dow Jones indices reveals that their scedasis functions are about equal and that they exhibit strong tail dependence.

Original languageEnglish
JournalEconometrics and Statistics
DOIs
Publication statusAccepted/In press - 2024

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© 2024 The Authors

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