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Nonparametric Bayesian Modeling for Multivariate Ordinal Data

Nonparametric Bayesian Modeling for Multivariate Ordinal Data This article proposes a probability model for k-dimensional ordinal outcomes, that is, it considers inference for data recorded in k-dimensional contingency tables with ordinal factors. The proposed approach is based on full posterior inference, assuming a flexible underlying prior probability model for the contingency table cell probabilities. We use a variation of the traditional multivariate probit model, with latent scores that determine the observed data. In our model, a mixture of normals prior replaces the usual single multivariate normal model for the latent variables. By augmenting the prior model to a mixture of normals we generalize inference in two important ways. First, we allow for varying local dependence structure across the contingency table. Second, inference in ordinal multivariate probit models is plagued by problems related to the choice and resampling of cutoffs defined for these latent variables. We show how the proposed mixture model approach entirely removes these problems. We illustrate the methodology with two examples, one simulated dataset and one dataset of interrater agreement. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Journal of Computational and Graphical Statistics Taylor & Francis

Nonparametric Bayesian Modeling for Multivariate Ordinal Data

Nonparametric Bayesian Modeling for Multivariate Ordinal Data

Journal of Computational and Graphical Statistics , Volume 14 (3): 16 – Sep 1, 2005

Abstract

This article proposes a probability model for k-dimensional ordinal outcomes, that is, it considers inference for data recorded in k-dimensional contingency tables with ordinal factors. The proposed approach is based on full posterior inference, assuming a flexible underlying prior probability model for the contingency table cell probabilities. We use a variation of the traditional multivariate probit model, with latent scores that determine the observed data. In our model, a mixture of normals prior replaces the usual single multivariate normal model for the latent variables. By augmenting the prior model to a mixture of normals we generalize inference in two important ways. First, we allow for varying local dependence structure across the contingency table. Second, inference in ordinal multivariate probit models is plagued by problems related to the choice and resampling of cutoffs defined for these latent variables. We show how the proposed mixture model approach entirely removes these problems. We illustrate the methodology with two examples, one simulated dataset and one dataset of interrater agreement.

 
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References (28)

Publisher
Taylor & Francis
Copyright
© American Statistical Association, Institute of Mathematical Statistics, and Interface Foundation of North America
ISSN
1537-2715
eISSN
1061-8600
DOI
10.1198/106186005X63185
Publisher site
See Article on Publisher Site

Abstract

This article proposes a probability model for k-dimensional ordinal outcomes, that is, it considers inference for data recorded in k-dimensional contingency tables with ordinal factors. The proposed approach is based on full posterior inference, assuming a flexible underlying prior probability model for the contingency table cell probabilities. We use a variation of the traditional multivariate probit model, with latent scores that determine the observed data. In our model, a mixture of normals prior replaces the usual single multivariate normal model for the latent variables. By augmenting the prior model to a mixture of normals we generalize inference in two important ways. First, we allow for varying local dependence structure across the contingency table. Second, inference in ordinal multivariate probit models is plagued by problems related to the choice and resampling of cutoffs defined for these latent variables. We show how the proposed mixture model approach entirely removes these problems. We illustrate the methodology with two examples, one simulated dataset and one dataset of interrater agreement.

Journal

Journal of Computational and Graphical StatisticsTaylor & Francis

Published: Sep 1, 2005

Keywords: Contingency tables; Dirichlet process; Markov chain Monte Carlo; Polychoric correlations

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