A conjugate prior for discrete hierarchical log-linear models

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Abstract

In Bayesian analysis of multi-way contingency tables, the selection of a prior distribution for either the log-linear parameters or the cell probabilities parameters is a major challenge. In this paper, we define a flexible family of conjugate priors for the wide class of discrete hierarchical log-linear models, which includes the class of graphical models. These priors are defined as the Diaconis-Ylvisaker conjugate priors on the log-linear parameters subject to "baseline constraints" under multinomial sampling. We also derive the induced prior on the cell probabilities and show that the induced prior is a generalization of the hyper Dirichlet prior. We show that this prior has several desirable properties and illustrate its usefulness by identifying the most probable decomposable, graphical and hierarchical log-linear models for a six-way contingency table. © Institute of Mathematical Statistics 2009.

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APA

Massam, H., Liu, J., & Dobra, A. (2009). A conjugate prior for discrete hierarchical log-linear models. Annals of Statistics, 37(6 A), 3431–3467. https://doi.org/10.1214/08-AOS669

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