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Further : | Further : | ||
+ | the conditional probability of "E" given "F" is =<math> \frac {P(EnF)}{P(F)}</math> | ||
+ | |||
+ | ''defn:'' if P(E|F) = P(E) , then E and F are independent events otherwise they are dependant events. | ||
+ | |||
+ | note: independence implies that <math> P(E)= P(E|F) = \frac {P(EnF)}{P(F)}</math> | ||
+ | |||
+ | or P(E).P(F)=P(EnF). | ||
+ | note : if P(E|F) = P(E) | ||
+ | then P(F|E) = P(F) |
Revision as of 18:06, 21 September 2008
If E and F are events in S (sample space) the the conditional probability of E and F is P(E|F) = P(E intersect F).
Further :
the conditional probability of "E" given "F" is =$ \frac {P(EnF)}{P(F)} $
defn: if P(E|F) = P(E) , then E and F are independent events otherwise they are dependant events.
note: independence implies that $ P(E)= P(E|F) = \frac {P(EnF)}{P(F)} $
or P(E).P(F)=P(EnF).
note : if P(E|F) = P(E)
then P(F|E) = P(F)