17.5. The Law of Total Probability 711
This rule extends to any set of disjoint events that make up the entire sample
space. For example,
Rule(Law of Total Probability: 3-events). IfE 1 ;E 2 ;andE 3 are disjoint and
PrŒE 1 [E 2 [E 3 çD 1 , then
PrŒAçDPrAjE 1PrŒE 1 çCPrAjE 2PrŒE 2 çCPrAjE 3PrŒE 3 ç:
This in turn leads to a three-event version of Bayes’ Rule in which the probability
of eventE 1 givenAis calculated from the “inverse” conditional probabilities ofA
givenE 1 ,E 2 , andE 3 :
Rule(Bayes’ Rule: 3-events).
Pr
E 1 jAD
PrAjE 1PrŒE 1 ç
PrAjE 1PrŒE 1 çCPrAjE 2PrŒE 2 çCPrAjE 3PrŒE 3 ç
The generalization of these rules tondisjoint events is a routine exercise (Prob-
lems 17.3 and 17.4).
17.5.1 Conditioning on a Single Event
The probability rules that we derived in Section 16.5.2 extend to probabilities con-
ditioned on the same event. For example, the Inclusion-Exclusion formula for two
sets holds when all probabilities are conditioned on an eventC:
PrA[BjCDPrAjCCPrBjC