Please use this identifier to cite or link to this item: http://hdl.handle.net/10311/1127
Title: Bayesian computation for logistic regression
Authors: Mokgatlhe, L.
Groenewald, P.C.N.
Keywords: Data augmentation
Bayes factors
Gibbs sampling
Logit model
Ordinal data
Polychotomous
Issue Date: 2005
Publisher: Elsevier, http://www.elsevier.com
Citation: Mokgatlhe, L. & Groenewald P.C.N. (2005) Bayesian computation for logistic regression, Computational Statistics & Data Analysis, Vol. 48, pp. 857-868
Abstract: A method for the simulation of samples from the exact posterior distributions of the parameters in logistic regression is proposed. It is based on the principle of data augmentation and a latent variable is introduced, similar to the approach of Albert and chib (J. Am. Stat. Assoc. 88 (1993) 669), who applied it to the probit model. In general, the full conditional distributions are intractable, but with the introductions of the latent variable all conditional distributions are uniform, and the Gibbs sampler is easily applicable. Marginal likelihoods for model selection can be obtained at the expense of additional Gibbs cycles. The technique is extended and can be applied with nominal or ordinal polychotomous data.
URI: http://hdl.handle.net/10311/1127
Appears in Collections:Research articles (Dept of Statistics)

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