Ch. 17 – Probability Models (Day 1 – The Geometric Model) Part IV –Randomness and Probability.

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Presentation transcript:

Ch. 17 – Probability Models (Day 1 – The Geometric Model) Part IV –Randomness and Probability

Kobe Bryant is an 84% free throw shooter. Suppose he takes 8 shots in a game. Assuming each shot is independent, find: – The probability that he makes all 8 shots – The probability that he misses at least one shot – The probability that he misses the first two shots – The probability that the first shot he misses is the third one taken

Bernoulli Trials In this chapter, we will be looking at probability models that involve a specific type of random situation – the Bernoulli trial Bernoulli trials have 3 requirements: – There are two possible outcomes (we will call these “success” and “failure”) – Each trial is independent – The probability of success (p) remains the same for each trial

Examples of Bernoulli Trials Flipping a coin Shooting free throws (assuming shots are independent) Asking a “yes” or “no” question to a group of randomly selected survey respondents Rolling a die to try to get a 3 – (but not rolling a die and recording how many times each number comes up)

Are these Bernoulli trials? You are rolling 5 dice and need to get at least two 6’s to win the game – Two outcomes? – Independent? – Probability stays the same for each trial? We record the eye colors found in a group of 500 people – Two outcomes? – Independent? – Probability stays the same for each trial? Yes (win or don’t) Yes (first game doesn’t affect next) Yes No (more than 2 eye colors)

Are these Bernoulli trials? A manufacturer recalls a doll because about 3% have buttons that are not properly attached. Customers return 37 of these dolls to the local toy store. Is the manufacturer likely to find any dangerous buttons? – Two outcomes? – Independent? – Probability stays the same for each trial? A city council of 11 Republicans and 8 Democrats picks a committee of 4 at random. What’s the probability that they choose all Democrats? – Two outcomes? – Independent? – Probability stays the same for each trial? Yes (dangerous or not) Yes (If there were many dolls made) Yes Yes (Republican or Democrat) No(choose from small #, not replaced) No

A note about independence… The last example on the previous slide was not independent because each time we removed a Democrat from the group, this changed the probability of choosing Democrats. But what if we had chosen our committee from the whole city of 550,000 people? Then removing one Democrat wouldn’t make any noticeable difference. If the population is large enough, then our trials will be “close enough” to independent The 10% condition: Bernoulli trials should be independent, but if they aren’t, we can still proceed as long as the sample size is less than 10% of the population size

The Geometric Setting Once we have decided that a situation involves Bernoulli trials, we then have to determine our variable of interest – in other words, what is the question asking us to find out? If the variable of interest (X) is the number of trials required to obtain the first success in a set of Bernoulli trials, then we are dealing with the geometric distribution

Examples of Geometric Situations Flip a coin until you get a tail Shoot free throws until you make one Draw cards from a deck with replacement until you draw a spade Roll a die until you get a 4

Calculating Geometric Probabilities When rolling a die, what is the probability that it will take 5 rolls to get the first three? What is the probability that it will take more than 7 rolls?

Calculating Geometric Probabilities Where p = the probability of success for one trial And X = the number of trials needed to obtain one success

In a large population, 18% of people believe that there should be prayer in public school. If a pollster selects individuals at random, what is the probability that the 6 th person he selects will be the first to support school prayer? What is the probability that it will take him more than 4 people to find one who supports school prayer?

Mean of a Geometric Random Variable If X is a geometric random variable with probability of success p on each trial, then the mean, or expected value, of X is That is, it takes an average of 1/p trials to have the first success In the previous example, how many people do we expect the pollster to have to survey in order to find one who supports school prayer?

Kobe again… Remember that Kobe Bryant is an 84% free throw shooter. What is the average number of shots he will have to take before he makes one?

Calculator Geometpdf(p,x) – Find the probability of an individual outcome Geometcdf(p,x) – Find the probability of finding the first success on or before the xth trial.

Homework 17-1 p. 401 #1, 7-12 Use the examples from your notes!