The Construction of Multivariate Distributions from Markov Random Fields
We address the problem of constructing and identifying a valid joint probability density function from a set of specified conditional densities. The approach taken is based on the development of relations between the joint and the conditional densities using Markov random fields (MRFs). We give a necessary and sufficient condition on the support sets of the random variables to allow these relations to be developed. This condition, which we call the Markov random field support condition, supercedes a common assumption known generally as the positivity condition. We show how these relations may be used in reverse order to construct a valid model from specification of conditional densities alone. The constructive process and the role of conditions needed for its application are illustrated with several examples, including MRFs with multiway dependence and a spatial beta process.
Year of publication: |
2000
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Authors: | Kaiser, Mark S. ; Cressie, Noel |
Published in: |
Journal of Multivariate Analysis. - Elsevier, ISSN 0047-259X. - Vol. 73.2000, 2, p. 199-220
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Publisher: |
Elsevier |
Subject: | beta conditionals | conditional model specification | Hammersley-Clifford theorem | negpotential function | positivity condition |
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