JOURNAL ARTICLE

Bayesian Multivariate Logistic Regression

Sean M. O’BrienDavid B. Dunson

Year: 2004 Journal:   Biometrics Vol: 60 (3)Pages: 739-746   Publisher: Oxford University Press

Abstract

Summary Bayesian analyses of multivariate binary or categorical outcomes typically rely on probit or mixed effects logistic regression models that do not have a marginal logistic structure for the individual outcomes. In addition, difficulties arise when simple noninformative priors are chosen for the covariance parameters. Motivated by these problems, we propose a new type of multivariate logistic distribution that can be used to construct a likelihood for multivariate logistic regression analysis of binary and categorical data. The model for individual outcomes has a marginal logistic structure, simplifying interpretation. We follow a Bayesian approach to estimation and inference, developing an efficient data augmentation algorithm for posterior computation. The method is illustrated with application to a neurotoxicology study.

Keywords:
Logistic regression Categorical variable Multivariate statistics Statistics Multinomial logistic regression Mathematics Prior probability Binary data Econometrics Logistic model tree Logistic distribution Bayesian probability Bayesian multivariate linear regression Computer science Regression analysis Binary number

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Citation History

Topics

Statistical Methods and Bayesian Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Advanced Statistical Methods and Models
Physical Sciences →  Mathematics →  Statistics and Probability
Optimal Experimental Design Methods
Social Sciences →  Decision Sciences →  Management Science and Operations Research
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