A Hybrid Markov Chain for the Bayesian Analysis of the Multinomial Probit Model


by Agostino Nobile
Bayesian inference for the Multinomial probit model, using the Gibbs sampler with data augmentation, has been recently considered by some authors. The present paper introduces a modification of the sampling technique, by defining a hybrid Markov chain in which, after each Gibbs sampling cycle, a Metropolis step is carried out along a direction of constant likelihood. Examples with simulated data sets motivate and illustrate the new technique. A proof of the ergodicity of the hybrid Markov chain is also given.

Keywords: Multinomial probit model, Gibbs sampling, Metropolis algorithm, Bayesian analysis.