1.b For the following Bayesian Network, write down the joint distribution expression of all the variables/nodes in terms of the product of conditional probabilities of all variables (also called: factored conditional probability expression).
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The joint distribution of all variables in a Bayesian Network is the product of the conditional probabilities of each variable given its parents in the network. So, if we assume that A and B have no parents, C is a child of A and B, D is a child of B, and E is a Show more…
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