arXiv Analytics

Sign in

arXiv:1803.04221 [math.PR]AbstractReferencesReviewsResources

Extremal dependence of random scale constructions

Sebastian Engelke, Thomas Opitz, Jennifer Wadsworth

Published 2018-03-12Version 1

A bivariate random vector can exhibit either asymptotic independence or dependence between the largest values of its components. When used as a statistical model for risk assessment in fields such as finance, insurance or meteorology, it is crucial to understand which of the two asymptotic regimes occurs. Motivated by their ubiquity and flexibility, we consider the extremal dependence properties of vectors with a random scale construction $(X_1,X_2)=R(W_1,W_2)$, with non-degenerate $R>0$ independent of $(W_1,W_2)$. Focusing on the presence and strength of asymptotic tail dependence as expressed through commonly-used summary parameters, broad factors that affect the results are: the heaviness of the tails of $R$ and $(W_1,W_2)$, the shape of the support of $(W_1,W_2)$, and dependence between $(W_1,W_2)$. When $R$ is distinctly lighter tailed than $(W_1,W_2)$, the extremal dependence of $(X_1,X_2)$ is typically the same as that of $(W_1,W_2)$, whereas similar or heavier tails for $R$ compared to $(W_1,W_2)$ typically result in increased extremal dependence. Similar tail heavinesses represent the most interesting and technical cases, and we find both asymptotic dependence and asymptotic independence of $(X_1,X_2)$ possible in such cases when $(W_1,W_2)$ exhibit asymptotic independence. Our results unify and extend many existing examples, and we use them to propose new models that encompass both dependence classes.

Related articles: Most relevant | Search more
arXiv:0912.4331 [math.PR] (Published 2009-12-22)
Asymptotic independence for unimodal densities
arXiv:1501.06596 [math.PR] (Published 2015-01-26)
Sawtooth models and asymptotic independence in large compositions
arXiv:1112.5070 [math.PR] (Published 2011-12-21, updated 2014-02-25)
Asymptotic independence of multiple Wiener-Itô integrals and the resulting limit laws