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Original Articles

Bayesian nonparametric estimation of a copula

, &
Pages 103-116 | Received 28 Mar 2012, Accepted 15 May 2013, Published online: 11 Jun 2013
 

Abstract

A copula can fully characterize the dependence of multiple variables. The purpose of this paper is to provide a Bayesian nonparametric approach to the estimation of a copula, and we do this by mixing over a class of parametric copulas. In particular, we show that any bivariate copula density can be arbitrarily accurately approximated by an infinite mixture of Gaussian copula density functions. The model can be estimated by Markov Chain Monte Carlo methods and the model is demonstrated on both simulated and real data sets.

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