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Original Articles

A Bayesian multivariate partially linear single-index probit model for ordinal responses

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Pages 1616-1636 | Received 04 Sep 2017, Accepted 14 Feb 2018, Published online: 25 Feb 2018
 

ABSTRACT

Combining the multivariate probit models with the multivariate partially linear single-index models, we propose new semiparametric latent variable models for multivariate ordinal response data. Based on the reversible jump Markov chain Monte Carlo technique, we develop a fully Bayesian method with free-knot splines to analyse the proposed models. To address the problem that the ordinary Gibbs sampler usually converges slowly, we make use of the partial-collapse and parameter-expansion techniques in our algorithm. The proposed methodology are demonstrated by simulated and real data examples.

Disclosure statement

No potential conflict of interest was reported by the author.

Additional information

Funding

The project was supported by the National Natural Science Foundation of China [Nos. 11471272 and 11661074].

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