Chapter 5 Normal Probability Distributions.

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Chapter 5 Normal Probability Distributions

Chapter Outline

Normal Approximations to Binomial Distributions Section 5.5 Normal Approximations to Binomial Distributions

Section 5.5 Objectives How to determine when the normal distribution can approximate the binomial distribution How to find the correction for continuity How to use the normal distribution to approximate binomial probabilities

Normal Approximation to a Binomial The normal distribution is used to approximate the binomial distribution when it would be impractical to use the binomial distribution to find a probability. Let n represent the number of independent trials, p is the probability of success in a single trial, and q is the probability of failure in a single trial.

Normal Approximation to a Binomial Normal Approximation to a Binomial Distribution If np  5 and nq  5, then the binomial random variable x is approximately normally distributed with mean μ = np standard deviation

Normal Approximation to a Binomial Binomial distribution: p = 0.25 As n increases the histogram approaches a normal curve.

Example: Approximating the Binomial Decide whether you can use the normal distribution to approximate x, the number of people who reply yes. If you can, find the mean and standard deviation. Sixty-two percent of adults in the U.S. have an HDTV in their homes. You randomly select 45 adults in the U.S. and ask them if they have an HDTV in their homes.

Solution: Approximating the Binomial You can use the normal approximation n = 45, p = 0.62, q = 0.38 np = (45)(0.62) = 27.9 nq = (45)(0.38) = 17.1 Mean: μ = np = 27.9 Standard Deviation:

Example: Approximating the Binomial Decide whether you can use the normal distribution to approximate x, the number of people who reply yes. If you can find, find the mean and standard deviation. Twelve percent of adults in the U.S. who do not have an HDTV in their home are planning to purchase one in the next two years. You randomly select 30 adults in the U.S. who do not have an HDTV and ask them if they are planning to purchase one in the next two years.

Solution: Approximating the Binomial You cannot use the normal approximation n = 30, p = 0.12, q = 0.88 np = (30)(0.12) = 3.6 nq = (30)(0.88) = 26.4 Because np < 5, you cannot use the normal distribution to approximate the distribution of x.

Correction for Continuity The binomial distribution is discrete and can be represented by a probability histogram. To calculate exact binomial probabilities, the binomial formula is used for each value of x and the results are added. Geometrically this corresponds to adding the areas of bars in the probability histogram.

Correction for Continuity When you use a continuous normal distribution to approximate a binomial probability, you need to move 0.5 unit to the left and right of the midpoint to include all possible x-values in the interval (correction for continuity). Exact binomial probability P(x = c) c Normal approximation P(c – 0.5 < x < c + 0.5) c+ 0.5 c– 0.5

Example: Using a Correction for Continuity Use a correction for continuity to convert the binomial intervals to a normal distribution interval. The probability of getting between 270 and 310 successes, inclusive. Solution: The discrete midpoint values are 270, 271, …, 310. The corresponding interval for the continuous normal distribution is 269.5 < x < 310.5. The normal distribution probability is P(269.5 < x < 310.5).

Example: Using a Correction for Continuity Use a correction for continuity to convert the binomial intervals to a normal distribution interval. The probability of getting at least 158 successes. Solution: The discrete midpoint values are 158, 159, 160, …. The corresponding interval for the continuous normal distribution is x > 157.5. The normal distribution probability is P(x > 157.5).

Example: Using a Correction for Continuity Use a correction for continuity to convert the binomial intervals to a normal distribution interval. The probability of getting less than 63 successes. Solution: The discrete midpoint values are …,60, 61, 62. The corresponding interval for the continuous normal distribution is x < 62.5. The normal distribution probability is P(x < 62.5).

Using the Normal Distribution to Approximate Binomial Probabilities In Words In Symbols Verify that the binomial distribution applies. Determine if you can use the normal distribution to approximate x, the binomial variable. Find the mean  and standard deviation for the distribution. Specify n, p, and q. Is np  5? Is nq  5?

Using the Normal Distribution to Approximate Binomial Probabilities In Words In Symbols Apply the appropriate continuity correction. Shade the corresponding area under the normal curve. Find the corresponding z-score(s). Find the probability. Add or subtract 0.5 from endpoints. Use the Standard Normal Table.

Example: Approximating a Binomial Probability Sixty-two percent of adults in the U.S. have an HDTV in their home. You randomly select 45 adults in the U.S. and ask them if they have an HDTV in their home. What is the probability that fewer than 20 of them respond yes? (Source: Opinion Research Corporation) Solution: Can use the normal approximation μ = 45 (0.62) = 27.9

Solution: Approximating a Binomial Probability Apply the continuity correction: Fewer than 20 (…17, 18, 19) corresponds to the continuous normal distribution interval x = 19.5 Normal Distribution μ = 27.9 σ = 3.26 1.58 μ =0 P(z < 1.58) Standard Normal μ = 0 σ = 1 z 0.9429 P(z < =2.58) = 0.0049

Example: Approximating a Binomial Probability A survey reports that 62% of Internet users use Windows® Internet Explorer ® as their browser. You randomly select 150 Internet users and ask each whether they use Internet Explorer as their browser. What is the probability that exactly 96 will say yes? (Source: Net Applications) Solution: Can use the normal approximation np = (150)(0.62) = 93 ≥ 5 nq = (150)(0.38) = 57 ≥ 5 μ = 150∙0.62 = 93

Solution: Approximating a Binomial Probability Apply the continuity correction: Exactly 96 corresponds to the continuous normal distribution interval 95.5 < x < 96.5 Normal Distribution μ = 93 σ = 5.94 0.59 μ =0 P(0.42 < z < 0.59) Standard Normal μ = 0 σ = 1 z 0.42 0.8212 0.7611 P(0.42 < z < 0.59) = 0.7224 – 0.6628 = 0.0596

Section 5.5 Summary Determined when the normal distribution can approximate the binomial distribution Found the correction for continuity Used the normal distribution to approximate binomial probabilities