Publication | Open Access
Efficient Search-Based Inference for Noisy-OR Belief Networks: TopEpsilon
14
Citations
6
References
2013
Year
Artificial IntelligenceIntelligent Information ProcessingEngineeringMachine LearningApproximate InferenceEfficient Search-based InferenceStatistical Relational LearningArbitrary Belief NetworksData ScienceUncertainty QuantificationProbabilistic ReasoningBelief FunctionComputational Learning TheoryKnowledge DiscoveryBayesian NetworkComputer ScienceAlgorithmic Information TheoryAutomated ReasoningStatistical InferenceInference Algorithms
Inference algorithms for arbitrary belief networks are impractical for large, complex belief networks. Inference algorithms for specialized classes of belief networks have been shown to be more efficient. In this paper, we present a search-based algorithm for approximate inference on arbitrary, noisy-OR belief networks, generalizing earlier work on search-based inference for two-level, noisy-OR belief networks. Initial experimental results appear promising.
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