Parameter-expandeddata augmentation for analyzing correlated binary data using multivariate probit models

被引:5
|
作者
Zhang, Xiao [1 ]
机构
[1] Michigan Technol Univ, Math Sci, 1400 Townsend Dr, Houghton, MI 49931 USA
关键词
correlated binary data; data augmentation; multivariate probit model; parameter-expanded data augmentation; BAYESIAN-ANALYSIS; MARKOV-CHAIN; EXPANSION;
D O I
10.1002/sim.8685
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Data augmentation has been commonly utilized to analyze correlated binary data using multivariate probit models in Bayesian analysis. However, the identification issue in the multivariate probit models necessitates a rigorous Metropolis-Hastings algorithm for sampling a correlation matrix, which may cause slow convergence and inefficiency of Markov chains. It is well-known that the parameter-expanded data augmentation, by introducing a working/artificial parameter or parameter vector, makes an identifiable model be non-identifiable and improves the mixing and convergence of data augmentation components. Therefore, we motivate to develop efficient parameter-expanded data augmentations to analyze correlated binary data using multivariate probit models. We investigate both the identifiable and non-identifiable multivariate probit models and develop the corresponding parameter-expanded data augmentation algorithms. We point out that the approaches, based on one non-identifiable model, circumvent a Metropolis-Hastings algorithm for sampling a correlation matrix and improve the convergence and mixing of correlation parameters; the identifiable model may produce the estimated regression parameters with smaller standard errors than the non-identifiable model does. We illustrate our proposed approaches using simulation studies and through the application to a longitudinal dataset from the Six Cities study.
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页码:3637 / 3652
页数:16
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