| A Bayesian Approach to the Multiple Comparisons Problem
by Andrew A. Neath and Joseph E. Cavanaugh Journal of Data Science, v.4, no.2, 131-146 Abstract Consider the problem of selecting independent samples from several populations for the purpose of between-group comparisons. An important aspect of the solution is the determination of clusters where mean levels are equal, often accomplished using multiple comparisons testing. We formulate the hypothesis testing problem of determining equal-mean clusters as a model selection problem. Information from all competing models is combined through Bayesian methods in an effort to provide a more realistic accounting of uncertainty. An example illustrates how the Bayesian approach leads to a logically sound presentation of multiple comparison results. Homepage | Table of Contents | Full Text of This Article
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