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International Journal of Approximate Reasoning
Volume 41, Issue 3, April 2006, Pages 257-286
 
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doi:10.1016/j.ijar.2005.06.002    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2005 Elsevier Inc. All rights reserved.

Inference in hybrid Bayesian networks with mixtures of truncated exponentials

Barry R. Cobba, Corresponding Author Contact Information, E-mail The Corresponding Author and Prakash P. Shenoyb, E-mail The Corresponding Author

aDepartment of Economics and Business, Virginia Military Institute, Lexington, VA 24450, USA bSchool of Business, University of Kansas, 1300 Sunnyside Avenue, Summerfield Hall, Lawrence, KS 66045-7585, USA

Received 1 January 2004; 
revised 1 May 2005; 
accepted 1 June 2005. 
Available online 7 July 2005.

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Abstract

Mixtures of truncated exponentials (MTE) potentials are an alternative to discretization for solving hybrid Bayesian networks. Any probability density function (PDF) can be approximated with an MTE potential, which can always be marginalized in closed form. This allows propagation to be done exactly using the Shenoy–Shafer architecture for computing marginals, with no restrictions on the construction of a join tree. This paper presents MTE potentials that approximate an arbitrary normal PDF with any mean and a positive variance. The properties of these MTE potentials are presented, along with examples that demonstrate their use in solving hybrid Bayesian networks. Assuming that the joint density exists, MTE potentials can be used for inference in hybrid Bayesian networks that do not fit the restrictive assumptions of the conditional linear Gaussian (CLG) model, such as networks containing discrete nodes with continuous parents.

Keywords: Hybrid Bayesian networks; Mixtures of truncated exponentials; Shenoy–Shafer architecture; Conditional linear Gaussian models


 
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