Risk, VaR, CVaR and Their Associated Portfolio Optimizations When Asset Returns Have a Multivariate Student T Distribution

13 Pages Posted: 2 Mar 2011

Date Written: February 28, 2011

Abstract

We show how to reduce the problem of computing VaR and CVaR with Student T return distributions to evaluation of analytical functions of the moments. This allows an analysis of the risk properties of systems to be carefully attributed between choices of risk function (e.g. VaR vs CVaR); choice of return distribution (power law tail vs Gaussian) and choice of event frequency, for risk assessment. We exploit this to provide a simple method for portfolio optimization when the asset returns follow a standard multivariate T distribution. This may be used as a semi-analytical verification tool for more general optimizers, and for practical assessment of the impact of fat tails on asset allocation for shorter time horizons.

Keywords: VaR, CVaR, Portfolio Optimization, VaR Optimization, CVaR Optimization, Optimisation, Student

JEL Classification: G11, C61, C63

Suggested Citation

Shaw, William Thornton, Risk, VaR, CVaR and Their Associated Portfolio Optimizations When Asset Returns Have a Multivariate Student T Distribution (February 28, 2011). Available at SSRN: https://ssrn.com/abstract=1772731 or http://dx.doi.org/10.2139/ssrn.1772731

William Thornton Shaw (Contact Author)

University College London ( email )

Departments of Mathematics and Computer Science
Gower Street
London, WC1E 6BT
United Kingdom

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