Illustration of Bayesian Inference in Normal Data Models Using Gibbs Sampling 论文
1990Journal of the American Statistical Association引用 973
Statistical Methods and Bayesian InferenceBayesian Methods and Mixture ModelsEconomic and Environmental Valuation
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.