By Richard E. Neapolitan
during this first version booklet, equipment are mentioned for doing inference in Bayesian networks and inference diagrams. hundreds and hundreds of examples and difficulties enable readers to understand the knowledge. a few of the issues mentioned contain Pearl's message passing set of rules, Parameter studying: 2 possible choices, Parameter studying r possible choices, Bayesian constitution studying, and Constraint-Based studying. For specialist structures builders and determination theorists.
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