Matrix‐variate risk measures under Wishart and gamma distributions

Author:

Arias‐Serna María Andrea1ORCID,Caro‐Lopera Francisco José2ORCID,Loubes Jean Michel3

Affiliation:

1. Faculty of Engineering University of Medellin Medellin Colombia

2. Faculty of Basic Sciences University of Medellin Medellin Colombia

3. Institut de Mathématiques de Toulouse University of Toulouse Toulouse France

Abstract

AbstractMatrix‐variate distribution theory has been instrumental across various disciplines for the past seven decades. However, a comprehensive examination of financial literature reveals a notable gap concerning the application of matrix‐variate extensions to Value‐at‐Risk (VaR). However, from a mathematical perspective, the core requirement for VaR lies in determining meaningful percentiles within the context of finance, necessitating the consideration of matrix c.d.f. This paper introduces the concept of “matrix‐variate VaR” for both Wishart and Gamma distributions. To achieve this, we leverage the theory of hypergeometric functions of matrix argument and integrate over positive definite matrices. Our proposed approach adeptly characterizes a company's exposure by into a comprehensive risk measure. This facilitates a readily computable estimation of the total incurred risk. Notably, this approach enables efficient computation of risk measures under Wishart, exponential, Erlang, gamma, and chi‐square distributions. The resulting risk measures are expressed in closed analytic forms, enhancing their practical utility for day‐to‐day risk management.

Publisher

Wiley

Reference47 articles.

1. Risk Measures: A Generalization from the Univariate to the Matrix‐variate (2019);Arias‐Serna M. A.;Journal of Risk,2021

2. Arias‐Serna M. A. Caro‐Lopera F. J. &Loubes J.‐M.(2021b).Matrix‐variate vector‐variate and univariate risk measures and related aspects. General Mathematics [math.GM]. Université Paul Sabatier ‐ Toulouse III; Universidad de Medellín 2021. English. ffNNT: 2021TOU30243ff. fftel‐03677236f. thesesups.ups‐tlse.fr/5235/1/2021TOU30243.pdf theses.hal.science/tel‐03677236/document.

3. On the Γ$\Gamma$‐distribution of matric argument and its related distributions;Asoo Y.;Memoirs of Faculty of Literature ans sciences, Shimane University, Natural science,1969

4. Birnbaum‐Saunders distribution: A review of model, analysis and applications (with discussion);Balakrishnan N.;Applied Stochastic Models in Business and Industry,2019

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