Further Results on Bayesian Method of Moments Analysis of the Multiple Regression Model
Justin Tobias () and
Arnold Zellner
Staff General Research Papers Archive from Iowa State University, Department of Economics
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.
Date: 2001-01-01
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Published in International Economic Review 2001, vol. 42, pp. 121-139
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Related works:
Journal Article: Further Results on Bayesian Method of Moments Analysis of the Multiple Regression Model (2001)
Working Paper: Further Results on Bayesian Method of Moments Analysis of the Multiple Regression Model (1998) 
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Persistent link: https://EconPapers.repec.org/RePEc:isu:genres:12021
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