Risks (Jul 2023)

On the Identification of the Riskiest Directional Components from Multivariate Heavy-Tailed Data

  • Miriam Hägele,
  • Jaakko Lehtomaa

DOI
https://doi.org/10.3390/risks11070130
Journal volume & issue
Vol. 11, no. 7
p. 130

Abstract

Read online

In univariate data, there exist standard procedures for identifying dominating features that produce the largest number of observations. However, in the multivariate setting, the situation is quite different. This paper aims to provide tools and methods for detecting dominating directional components in multivariate data. We study general heavy-tailed multivariate random vectors in dimension d ≥ 2 and present procedures that can be used to explain why the data are heavy-tailed. This is achieved by identifying the set of the riskiest directional components. The results are of particular interest in insurance when setting reinsurance policies, and in finance when hedging a portfolio of multiple assets.

Keywords