845 B
845 B
#Math #Probability
Conditional Probability
Conditional probability, or the probability of A given B is:
P(A|B)
Let's start with the probability of P(A \cup B). We know that when P(A | B), B is given to be true. Therefore, we must divide the probably of P(A \cup B) by P(B).
P(A | B) = \frac {P(A \cup B)} {P(B)}
This defines P(A | B) for events. When P(A | B) = P(A), A and B are independent.
Bayes’ Theorem
Let's start with the definitions of conditional probability:
P(A | B) = \frac {P(A \cup B)} {P(B)} \\
P(B | A) = \frac {P(A \cup B)} {P(A)}
Rearrange the second equation to define P(A \cup B):
P(A \cup B) = P(A) P(B | A)
Now substitute that equation into the first equation:
P(A | B) = \frac {P(A) P(B | A)} {P(B)}
The above equation is Bayes' Theorem for events.