Correlation and Dependence in Risk Management: Properties and Pitfalls

Abstract
Modern risk management calls for an understanding of stochastic dependence going beyond simple linear correlation. This paper deals with the static (non-time-dependent) case and emphasizes the copula representation of dependence for a random vector. Linear correlation is a natural dependence measure for multivariate normally and, more generally, elliptically distributed risks but other dependence concepts like comonotonicity and rank correlation should also be understood by the risk management practitioner. Using counterexamples the falsity of some commonly held vies on correlation is demonstrated; in general, these fallacies arise from the naïve assumption that dependence properties of the elliptical world also hold in the non-elliptical world. In particular, the problem of finding multivariate models which are consistent with prespecified marginal distributions and correlations is addressed. Pitfalls are highlighted and simulation algorithms avoiding these problems are constructed.
Year
1999
Categories
RPP1
Publications
ETH Working Paper
Authors
Embrechts, Paul
McNeil, Alexander
Straumann, Daniel