Illustration of Bayesian Inference in Normal Data Models Using Gibbs Sampling

Alan E. Gelfand(University of Connecticut), Susan E. Hills(University of Nottingham), Amy Racine-Poon(Novartis (Switzerland)), A. F. M. Smith(Imperial College London)
Journal of the American Statistical Association
December 1, 1990
Cited by 975

Abstract

Abstract The use of the Gibbs sampler as a method for calculating Bayesian marginal posterior and predictive densities is reviewed and illustrated with a range of normal data models, including variance components, unordered and ordered means, hierarchical growth curves, and missing data in a crossover trial. In all cases the approach is straightforward to specify distributionally and to implement computationally, with output readily adapted for required inference summaries.


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