2 Graphical Models in a Nutshell
variablesare assumed to be Boolean.figure 2.1(b) showsthe conditional probability distributions for each of the random variables. We use initials P, T, I, X,andS for shorthand. At the roots, we have the prior probability of the patient having each disease. The probability that the patient does not have the disease a priori
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