4.5 Hypergeometric Distributions. What is the expected number of aces you can expect get in a typical poker hand? What is probability distribution for.

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Presentation transcript:

4.5 Hypergeometric Distributions

What is the expected number of aces you can expect get in a typical poker hand? What is probability distribution for starting line-up for a basketball team? These are not binomial distributions. How do we figure them out?

Consider the following… In Ontario, a citizen may be called for jury duty every three years. Although most juries have 12 members, those for civil trials usually require only 6 members. Suppose a civil-court jury is being selected from a pool of 18 citizens, 8 of whom are men. a)What is the probability distribution for the number of women on the jury? b)How many women could you expect to have on the jury?

Let’s think about this… Are the probabilities the same for each jury member selected? Once a jury member is chosen, do you return him/her to the pool? That is, can a jury member be chosen twice? No replacement! The probabilities are dependent

Simulation Open “4.5.1 Jury Selection.ftm” Follow the instructions We will discuss these results in 15 minutes

Jury Selection This is an example of a hypergeometric distribution Success or failure only possible outcomes The probabilities are dependent –Probability of success changes as each trial made Let’s calculate the theoretical probability distribution:

x P(X= x)

What is the expected number of women on the jury? The expected number of women on the jury is approximately 3.33.

Hypergeometric Distributions Success or failure only possible outcomes The probabilities are dependent –Probability of success changes as each trial made Random variable is number of successes a is the number of successful outcomes among n possible outcomes

Expectation for Hypergeometric Distribution The average probability of a success should be the same as the ratio of successes in population:

Check: Calculate the expected number of women on the jury: n = 18 r = 6 a = number of successes = number of women = 10

Classify the following distributions as binomial, hypergeometric, or neither (a)Drawing names out of a hat without replacement and recording the number of names that begin with a constant (b)Generating random numbers on a calculator and counting the number of 5s (c)Counting the number of hearts in a hand of five cards dealt from a well-shuffled deck. (d)Asking all students in a class whether they prefer cola or ginger ale hypergeometric binomial Are there only two outcomes (success/failure)? Are the trials independent/dependent?

Classify the following distributions as binomial, hypergeometric, or neither (e)Predicting the number of green frogs from a randomly selected group of amphibians. (f)Selecting the winning ticket in a lottery (g)Predicting the expected number of heads when flipping a coin 100 times (h)Predicting the number of boys among five children randomly selected from a group of eight boys and six girls hypergeometric Neither (uniform) hypergeometric binomial

Example 2 A box contains seven yellow, three green, five purple, and six red candies jumbled together. (a)What is the expected number of red candies among five candies poured from the box? (b)Verify that the expectation formula for a hypergeometric distribution gives same result as the general equation for the expectation of any probability distribution.

Example 2a sol’n n = = 21 r = 5 a = number of successes = number of red candies = 6 One would expect to have approximately 1.4 red candies among the 5 candies.

Example 2b sol’n Using the general formula for expected value: Again, the expected number of red candies is approximately 1.4.

Example 3 In the spring, the Ministry of the Environment caught and tagged 500 raccoons in a wilderness area. The raccoons were released after being vaccinated against rabies. To estimate the raccoon population in the area, the ministry caught 40 raccoons during the summer. Of these, 15 had tags. (a)Determine whether this situation can be modelled with a hypergeometric distribution. (b)Estimate the raccoon population in the wilderness area.

Example 3a sol’n Hypergeometric: 2 outcomes, dependent trials Raccoons either tagged (success) or not tagged (failure) The 40 raccoons caught were all different from each other –i.e., no repetitions –Trials dependent This situation has all the characteristics of hypergeometric distribution

Example 3b sol’n Assume that number of tagged raccoons caught during summer is expected value –That is, if we catch 40 raccoons, how many can we expected to be tagged? E(X) = 15 Solve for population size, n r = number of trials = number raccoons caught = 40 a = number of successes in population = number of tagged raccoons in population = 500

Example 3b sol’n There are approximately 1333 raccoons in the area.