Final answer:
The posterior probability that the athlete is a drug user, given that her test result is positive, is found using Bayes' theorem and is approximately 0.533.
Step-by-step explanation:
The question asks for the posterior probability that an athlete is a drug user given a positive test result.
Let's first determine the various probabilities:
- P(User) = Prior probability of being a drug user = 0.05
- P(Non-User) = 1 - P(User) = 0.95
- P(Positive|User) = Probability of testing positive if the person is a drug user = 0.65
- P(Positive|Non-User) = Probability of testing positive if the person is not a drug user = 0.03
We use Bayes' theorem to find the posterior probability:
P(User|Positive) = (P(Positive|User) * P(User)) / (P(Positive|User) * P(User) + P(Positive|Non-User) * P(Non-User))
Inserting the numbers, we get:
P(User|Positive) = (0.65 * 0.05) / ((0.65 * 0.05) + (0.03 * 0.95)) = 0.0325 / 0.06085 ≈ 0.533
The posterior probability that the athlete is a drug user given that her test result is positive is approximately 0.533.