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Citation

Ghosh, Joyee; Herring, Amy H.; & Siega-Riz, Anna Maria (2011). Bayesian Variable Selection for Latent Class Models. Biometrics, 67(3), 917-925. PMCID: PMC3035762

Abstract

In this article, we develop a latent class model with class probabilities that depend on subject-specific covariates. One of our major goals is to identify important predictors of latent classes. We consider methodology that allows estimation of latent classes while allowing for variable selection uncertainty. We propose a Bayesian variable selection approach and implement a stochastic search Gibbs sampler for posterior computation to obtain model-averaged estimates of quantities of interest such as marginal inclusion probabilities of predictors. Our methods are illustrated through simulation studies and application to data on weight gain during pregnancy, where it is of interest to identify important predictors of latent weight gain classes.

URL

http://dx.doi.org/10.1111/j.1541-0420.2010.01502.x

Reference Type

Journal Article

Year Published

2011

Journal Title

Biometrics

Author(s)

Ghosh, Joyee
Herring, Amy H.
Siega-Riz, Anna Maria

PMCID

PMC3035762

ORCiD

Siega-Riz - 0000-0002-1303-4248