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5 May, 01:30

slader Suppose that 8% of all bicycle racers use steroids, that a bicyclist who uses steroids tests positive for steroids 96% of the times, and that a bicyclist who does not use steroids tests positive for steroids 9% of the time. What is the probability that a randomly selected bicyclist who tests positive for steroids actually uses steroids?

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  1. 5 May, 01:54
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    P = 0.4812

    Step-by-step explanation:

    First, we need to use here two expressions and then do the calculations.

    The first one is the conditional probability which is:

    P (B|A) = P (A∩B) / P (A) (1)

    The second expression to use has relation with the Bayes's theorem which is the following:

    P (D|C) = P (C|D) * P (D) / P (C|D) * P (D) + P (C|d) * P (d) (2)

    Now, the expression (2) is the one that we will use to calculate the probability of a selected random bicyclist who tests positive for steroids.

    So, in this case, we will call C for positive and D that is using steroids and d is the opposite of d, which means do not use steroids.

    Then, the probabilities are the following:

    P (D) = 8% or 0.08

    P (C|D) = 96% or 0.96

    P (C|d) = 9% or 0.09

    P (d) = 1 - 0.08 = 0.92

    With these data, let's replace in expression 2

    P (D|C) = 0.96 * 0.08 / 0.96 * 0.08 + 0.09*0.92

    P (D|C) = 0.0768 / 0.1596

    P (D|C) = 0.4812 or 48.12%
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