@article{65235931314d44eeb1b9c0c653a02ec9,
title = "Time-varying extreme value dependence with application to leading European stock markets",
abstract = "Extremal dependence between international stock markets is of particular interest in today{\textquoteright}s global financial landscape. However, previous studies have shown this dependence is not necessarily stationary over time. We concern ourselves with modeling extreme value dependence when that dependence is changing over time, or other suitable covariate. Working within a framework of asymptotic dependence, we introduce a regression model for the angular density of a bivariate extreme value distribution that allows us to assess how extremal dependence evolves over a covariate. We apply the proposed model to assess the dynamics governing extremal dependence of some leading European stock markets over the last three decades, and find evidence of an increase in extremal dependence over recent years.",
author = "Daniela Castro and {de Carvalho}, Miguel and Jennifer Wadsworth",
note = "KAUST Repository Item: Exported on 2020-10-01 Acknowledgements: We thank the Editor, Associate Editor, and two anonymous referees. We extend our thanks to Ant{\'o}nio Rua, Vanda In{\'a}cio de Carvalho, and Claudia Wehrhahn for helpful discussions. Part of this work was written while D. Castro-Camilo was visiting the University of Cambridge—Statistical Laboratory, and while M. de Carvalho was visiting Banco de Portugal. Supported in part by Funda{\c c}{\~a}o para a Ci{\^e}ncia e a Tecnologia, through UID/MAT/00006/2013 and by the Chilean National Science Foundation through Fondecyt 11121186, “Constrained Inference Problems in Extreme Value Modeling”.",
year = "2018",
month = mar,
day = "9",
doi = "10.1214/17-AOAS1089",
language = "English (US)",
volume = "12",
pages = "283--309",
journal = "The Annals of Applied Statistics",
issn = "1932-6157",
publisher = "Institute of Mathematical Statistics",
number = "1",
}