Further Results on Bayesian Method of Moments Analysis of the Multiple Regression Model

  • 1 January 2001
    • preprint
    • Published in RePEc
Abstract
In this article we extend previous BMOM results by showing how information about a variance parameter and its relation to regression coefficients produces a rich class of postdata densities for regression parameters. Prediction and model selection techniques are also described. We also discuss the well-documented link between cross-entropy and the average log odds and then use this criterion in an experiment to compare results obtained from BMOM and Bayes approaches using data generated from known models.
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