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Discrete Probability Distributions
Chapter 6 Discrete Probability Distributions 6.1 6.2
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Discrete Random Variables
Section 6.1 Discrete Random Variables
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Objectives Distinguish between discrete and continuous random variables Identify discrete probability distributions Construct probability histograms Compute and interpret the mean of a discrete random variable Interpret the mean of a discrete random Compute the standard deviation of a discrete random variable 3
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Objective 1 Distinguish between Discrete and Continuous Random Variables A random variable is a numerical measure of the outcome from a probability experiment, so its value is determined by chance. Random variables are denoted using letters such as X. 4
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A discrete random variable has either a finite or countable number of values. The values of a discrete random variable can be plotted on a number line with space between each point. A continuous random variable has infinitely many values. The values of a continuous random variable can be plotted on a line in an uninterrupted fashion. 5
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(b) The number of leaves on a randomly selected oak tree.
EXAMPLE Distinguishing Between Discrete and Continuous Random Variables Determine whether the following random variables are discrete or continuous. State possible values for the random variable. The number of light bulbs that burn out in a room of 10 light bulbs in the next year. (b) The number of leaves on a randomly selected oak tree. (c) The length of time between calls to 911. Discrete; x = 0, 1, 2, …, 10 Discrete; x = 0, 1, 2, … Continuous; t > 0 6
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Objective 2 Identify Discrete Probability Distributions
A probability distribution provides the possible values of the random variable X and their corresponding probabilities. A probability distribution can be in the form of a table, graph or mathematical formula. The Rules for a Probability Distribution Σ P(x) = 1 0 ≤ P(x) ≤ 1 7
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Does this represent a probability distribution?
EXAMPLE A Discrete Probability Distribution The table to the right shows the probability distribution for the random variable X, where X represents the number of movies streamed on Netflix each month. Does this represent a probability distribution? x P(x) 0.06 1 0.58 2 0.22 3 0.10 4 0.03 5 0.01 Yes since: Σ P(x) = 1 0 ≤ P(x) ≤ 1 8
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Are each of the following a probability distribution?
EXAMPLE Identifying Probability Distributions Are each of the following a probability distribution? x P(x) 0.16 1 0.18 2 0.22 3 0.10 4 0.30 5 0.01 x P(x) 0.16 1 0.18 2 0.22 3 0.10 4 0.30 5 – 0.01 No. Σ P(x) = 0.97 No. P(x = 5) = –0.01 9
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Objective 3 Construct Probability Histograms A probability histogram is a histogram in which the horizontal axis corresponds to the value of the random variable and the vertical axis represents the probability of that value of the random variable. 10
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EXAMPLE Drawing a Probability Histogram
Draw a probability histogram of the probability distribution to the right, which represents the number of movies streamed on Netflix each month. x P(x) 0.06 1 0.58 2 0.22 3 0.10 4 0.03 5 0.01 11
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Objective 4 Compute and Interpret the Mean of a Discrete Random Variable 12
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EXAMPLE Computing the Mean of a Discrete Random Variable
P(x) 0.06 1 0.58 2 0.22 3 0.10 4 0.03 5 0.01 Compute the mean of the probability distribution to the right, which represents the number of DVDs a person rents from a video store during a single visit. 13
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The difference between and μX gets closer to 0 as n increases.
Interpretation of the Mean of a Discrete Random Variable Suppose an experiment is repeated n independent times and the value of the random variable X is recorded. As the number of repetitions of the experiment increases, the mean value of the n trials will approach μX, the mean of the random variable X. In other words, let x1 be the value of the random variable X after the first experiment, x2 be the value of the random variable X after the second experiment, and so on. Then The difference between and μX gets closer to 0 as n increases. 14
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The following data represent the number of DVDs rented by 100 randomly selected customers in a single visit. Compute the mean number of DVDs rented. 15
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As the number of trials of the experiment increases, the mean number of rentals approaches the mean of the probability distribution. 16
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Objective 5 Compute and Interpret the Mean of a Discrete Random Variable Because the mean of a random variable represents what we would expect to happen in the long run, it is also called the expected value, E(X), of the random variable. 17
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EXAMPLE Computing the Expected Value of a Discrete Random Variable
A term life insurance policy will pay a beneficiary a certain sum of money upon the death of the policy holder. These policies have premiums that must be paid annually. Suppose a life insurance company sells a $250,000 one year term life insurance policy to a 49-year-old female for $530. According to the National Vital Statistics Report, Vol. 47, No. 28, the probability the female will survive the year is Compute the expected value of this policy to the insurance company. x P(x) 530 530 – 250,000 = -249,470 Survives Does not survive E(X) = 530( ) + (-249,470)( ) = $7.50 18
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Objective 6 Compute the Standard Deviation of a Discrete Random Variable 19
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EXAMPLE. Computing the Variance and Standard Deviation
EXAMPLE Computing the Variance and Standard Deviation of a Discrete Random Variable Compute the variance and standard deviation of the following probability distribution which represents the number of DVDs a person rents from a video store during a single visit. Reminder, the mean that we found was 1.49. x P(x) 0.06 1 0.58 2 0.22 3 0.10 4 0.03 5 0.01 I prefer to use the first formula with the list in the calculator 6-20 20 20
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EXAMPLE. Computing the Variance and Standard
EXAMPLE Computing the Variance and Standard Deviation of a Discrete Random Variable x μ P(x) 1.49 –1.49 2.2201 0.06 1 –0.49 0.2401 0.58 2 0.51 0.2601 0.22 3 1.51 2.2801 0.1 4 2.51 6.3001 0.03 5 3.51 0.01 6-21 21 21
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6.1 summary Distinguish between discrete and continuous random variables Identify discrete probability distributions Construct probability histograms Compute and interpret the mean of a discrete random variable Interpret the mean of a discrete random Compute the standard deviation of a discrete random variable 22
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The Binomial Probability Distribution
Section 6.2 The Binomial Probability Distribution
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Objectives Determine whether a probability experiment is a binomial experiment Compute probabilities of binomial experiments Compute the mean and standard deviation of a binomial random variable Construct binomial probability histograms 24
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Criteria for a Binomial Probability Experiment
An experiment is said to be a binomial experiment if For each trial, there are two mutually exclusive (or disjoint) outcomes, success or failure. The experiment is performed a fixed number of times. Each repetition of the experiment is called a trial. 3. The trials are independent. This means the outcome of one trial will not affect the outcome of the other trials. 4. The probability of success is fixed for each trial of the experiment. B N I S 25
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Notation Used in the Binomial Probability Distribution
There are n independent trials of the experiment. Let p denote the probability of success so that 1 – p is the probability of failure. Let X be a binomial random variable that denotes the number of successes in n independent trials of the experiment. So, 0 < x < n. 26
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Binomial experiment Which of the following are binomial experiments?
EXAMPLE Identifying Binomial Experiments Which of the following are binomial experiments? (a) A player rolls a pair of fair die 10 times. The number X sum of 7’s rolled is recorded. Binomial experiment (b) The 11 largest airlines had an on-time percentage of 84.7% in November, 2001 according to the Air Travel Consumer Report. In order to assess reasons for delays, an official with the FAA randomly selects flights until she finds 10 that were not on time. The number of flights X that need to be selected is recorded. Not a binomial experiment – not a fixed number of trials. 27
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Which of the following are binomial experiments?
EXAMPLE Identifying Binomial Experiments Which of the following are binomial experiments? (c) In a class of 30 students, 55% are female. The instructor randomly selects 4 students. The number X of females selected is recorded. Not a binomial experiment – the trials are not independent. 28
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Objective 2 Compute Probabilities of Binomial Experiments
Binomial Probability Distribution Function The probability of obtaining x successes in n independent trials of a binomial experiment is given by where p is the probability of success. 29
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EXAMPLE Using the Binomial Probability Distribution Function
According to the Experian Automotive, 35% of all car-owning households have three or more cars. In a random sample of 20 car-owning households, what is the probability that exactly 5 have three or more cars? B N I S B own 3 or more/not N = 20 I S P(own 3 or more cars) = 0.35 30
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EXAMPLE Using the Binomial Probability Distribution Function
According to the Experian Automotive, 35% of all car-owning households have three or more cars. (b) In a random sample of 20 car-owning households, what is the probability that less than 4 have three or more cars? P(X < 4) B N I S B own 3 or more/not N = 20 I S P(own 3 or more cars) = 0.35 31
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EXAMPLE Using the Binomial Probability Distribution Function
According to the Experian Automotive, 35% of all car-owning households have three or more cars. (c) In a random sample of 20 car-owning households, what is the probability that at least 4 have three or more cars? P(X > 4) B N I S B own 3 or more/not N = 20 I S P(own 3 or more cars) = 0.35 32
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Objective 3 Mean (or Expected Value) and Standard Deviation of a Binomial Random Variable A binomial experiment with n independent trials and probability of success p has a mean and standard deviation given by the formulas 33
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EXAMPLE Finding the Mean and Standard Deviation of a Binomial Random Variable
According to the Experian Automotive, 35% of all car-owning households have three or more cars. In a simple random sample of 400 car-owning households, determine the mean and standard deviation number of car-owning households that will have three or more cars. 34
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Objective 4 Construct Binomial Probability Histograms 35
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For each histogram, comment on the shape of the distribution.
EXAMPLE Constructing Binomial Probability Histograms (a) Construct a binomial probability histogram with n = 8 and p = 0.15. (b) Construct a binomial probability histogram with n = 8 and p = 0. 5. (c) Construct a binomial probability histogram with n = 8 and p = 0.85. For each histogram, comment on the shape of the distribution. 36
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Construct a binomial probability histogram with n = 25 and p = 0.8.
EXAMPLE Constructing Binomial Probability Histograms Construct a binomial probability histogram with n = 25 and p = 0.8. Then with n = 50 and p = 0.8 And with n = 70 and p = 0.8 Comment on the shape of the distributions. 40
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For a fixed probability of success, p, as the number of trials n in a binomial experiment increase, the probability distribution of the random variable X becomes bell-shaped. As a general rule of thumb, if np(1 – p) > 10, then the probability distribution will be approximately bell-shaped. 44
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Use the Empirical Rule to identify unusual observations in a binomial experiment.
The Empirical Rule states that in a bell-shaped distribution about 95% of all observations lie within two standard deviations of the mean. Any observation that lies outside this interval may be considered unusual because the observation occurs less than 5% of the time. 45
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The result is unusual since 162 > 159.1
EXAMPLE Using the Mean, Standard Deviation and Empirical Rule to Check for Unusual Results in a Binomial Experiment According to the Experian Automotive, 35% of all car-owning households have three or more cars. A researcher believes this percentage is higher than the percentage reported by Experian Automotive. He conducts a simple random sample of 400 car-owning households and found that 162 had three or more cars. Is this result unusual ? The result is unusual since 162 > 159.1 46
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6.2 summary Determine whether a probability experiment is a binomial experiment Compute probabilities of binomial experiments Compute the mean and standard deviation of a binomial random variable Construct binomial probability histograms 47
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