Inference in Bayesian Networks - MIT OpenCourseWare
Using the joint distribution. To answer any query involving a conjunction of variables, sum over the variables not involved in the query. Given the joint distribution over the variables, we can easily answer any question about the value of a single variable by summing (or marginalizing) over the other variables.
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