Efficient bayesian inference for gaussian copula regression models

Citation
Pitt, Michael et al., Efficient bayesian inference for gaussian copula regression models, Biometrika , 93(3), 2006, pp. 537-554
Journal title
ISSN journal
00063444
Volume
93
Issue
3
Year of publication
2006
Pages
537 - 554
Database
ACNP
SICI code
Abstract
A Gaussian copula regression model gives a tractable way of handling a multivariate regression when some of the marginal distributions are non-Gaussian. Our paper presents a general Bayesian approach for estimating a Gaussian copula model that can handle any combination of discrete and continuous marginals, and generalises Gaussian graphical models to the Gaussian copula framework. Posterior inference is carried out using a novel and efficient simulation method. The methods in the paper are applied to simulated and real data.