49
45

Estimation of extreme risk regions under multivariate regular variation

Abstract

When considering d possibly dependent random variables, one is often interested in extreme risk regions, with very small probability p. We consider risk regions of the form zRd:f(z)β{\mathbf{z}\in\mathbb{R}^d:f(\mathbf{z})\leq\beta}, where f is the joint density and β\beta a small number. Estimation of such an extreme risk region is difficult since it contains hardly any or no data. Using extreme value theory, we construct a natural estimator of an extreme risk region and prove a refined form of consistency, given a random sample of multivariate regularly varying random vectors. In a detailed simulation and comparison study, the good performance of the procedure is demonstrated. We also apply our estimator to financial data.

View on arXiv
Comments on this paper