Constrained abductive reasoning with fuzzy parameters in Bayesian networks

Constrained abductive reasoning with fuzzy parameters in Bayesian networks

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Article ID: iaor20052006
Country: United Kingdom
Volume: 32
Issue: 1
Start Page Number: 87
End Page Number: 105
Publication Date: Jan 2005
Journal: Computers and Operations Research
Authors: ,
Keywords: fuzzy sets, networks
Abstract:

This work proposes a novel approach for solving abductive reasoning problems in Bayesian networks involving fuzzy parameters and extra constraints. The proposed method formulates abduction problems using nonlinear programming. To maximize the sum of the fuzzy membership functions subjected to various constraints, such as boundary, dependency and disjunctive conditions, unknown node belief propagation is completed. The model developed here can be built on any exact propagation methods, including clustering, joint tree decomposition, etc.

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