Alan E. Gelfand,Susan E. Hills,Amy Racine-Poon,A. F. M. Smith
标识
DOI:10.1080/01621459.1990.10474968
摘要
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.