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By: Neil E. Cotter |
Probability |
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Bayes' Theorem |
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Example 1 |
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Ex: Consider a lie detector test. Notation for this problem is as follows:
− ≡ detector says you Lied
+ ≡ detector says you told the Truth
L ≡ you did Lie
T ≡ you told the Truth
The following information is given:
P( − | L ) = 0.89
P( + | L ) = 0.11
P( − | T ) = 0.1
P( + | T ) = 0.9
Determine the probability, P( L | − ), that you actually lied if the lie detector result says you lied. Our intuition might suggest an answer of approximately 90 %.
Sol'n: Using Bayes' Theorem, we calculate the probability:
where
We need to know P(L) and P(T) to solve this problem.
Suppose we have the following additional information:
These values suggest that most people tell the truth. Using these values, we complete the calculation of the desired probability:
There is only a 32 % chance you lied when the detector says you lied.