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© 2010 Pearson Prentice Hall. All rights reserved Confidence Intervals for the Population Mean When the Population Standard Deviation is Unknown
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As we discussed earlier, a confidence interval is nothing more than a range of numbers we might expect the population parameter to take on. This range was constructed by the general formula: Point estimate ± margin of error.
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In this instance, our point estimate will be the sample mean,. Due to knowledge restrictions, we will also be unable to know what the true standard deviation of the population is; so we will have to estimate it’s value with the sample standard deviation.
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9-4 Suppose that a simple random sample of size n is taken from a population. If the population from which the sample is drawn follows a normal distribution, the distribution of follows Student’s t-distribution with n-1 degrees of freedom where is the sample mean and s is the sample standard deviation. Student’s t-Distribution
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9-5 a)Obtain 1,000 simple random samples of size n=5 from a normal population with =50 and =10. b)Determine the sample mean and sample standard deviation for each of the samples. c)Compute and for each sample. d)Draw a histogram for both z and t. Parallel Example 1: Comparing the Standard Normal Distribution to the t-Distribution Using Simulation
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9-6 Histogram for z
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9-7 Histogram for t
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9-8 CONCLUSIONS: The histogram for z is symmetric and bell-shaped with the center of the distribution at 0 and virtually all the rectangles between -3 and 3. In other words, z follows a standard normal distribution. The histogram for t is also symmetric and bell-shaped with the center of the distribution at 0, but the distribution of t has longer tails (i.e., t is more dispersed), so it is unlikely that t follows a standard normal distribution. The additional spread in the distribution of t can be attributed to the fact that we use s to find t instead of . Because the sample standard deviation is itself a random variable (rather than a constant such as ), we have more dispersion in the distribution of t.
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9-9 1.The t-distribution is different for different degrees of freedom. 2.The t-distribution is centered at 0 and is symmetric about 0. 3.The area under the curve is 1. The area under the curve to the right of 0 equals the area under the curve to the left of 0 equals 1/2. 4.As t increases without bound, the graph approaches, but never equals, zero. As t decreases without bound, the graph approaches, but never equals, zero. Properties of the t-Distribution
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9-10 5.The area in the tails of the t-distribution is a little greater than the area in the tails of the standard normal distribution, because we are using s as an estimate of , thereby introducing further variability into the t- statistic. 6.As the sample size n increases, the density curve of t gets closer to the standard normal density curve. This result occurs because, as the sample size n increases, the values of s get closer to the values of , by the Law of Large Numbers. Properties of the t-Distribution
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9-13 Parallel Example 2: Finding t-values Find the t-value such that the area under the t- distribution to the right of the t-value is 0.2 assuming 10 degrees of freedom. That is, find t 0.20 with 10 degrees of freedom.
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9-14 The figure to the left shows the graph of the t-distribution with 10 degrees of freedom. Solution The unknown value of t is labeled, and the area under the curve to the right of t is shaded. The value of t 0.20 with 10 degrees of freedom is 0.8791.
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9-15 Constructing a (1- ) 100% Confidence Interval for , Unknown Suppose that a simple random sample of size n is taken from a population with unknown mean and unknown standard deviation . A (1- ) 100% confidence interval for is given by LowerUpperbound: Note: The interval is exact when the population is normally distributed. It is approximately correct for nonnormal populations, provided that n is large enough.
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9-16 Parallel Example 3: Constructing a Confidence Interval about a Population Mean The pasteurization process reduces the amount of bacteria found in dairy products, such as milk. The following data represent the counts of bacteria in pasteurized milk (in CFU/mL) for a random sample of 12 pasteurized glasses of milk. Data courtesy of Dr. Michael Lee, Professor, Joliet Junior College. Construct a 95% confidence interval for the bacteria count.
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9-17 NOTE: Each observation is in tens of thousand. So, 9.06 represents 9.06 x 10 4.
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9-18 Solution: Checking Normality and Existence of Outliers Normal Probability Plot for CFU/ml
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9-19 Boxplot of CFU/mL Solution: Checking Normality and Existence of Outliers
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9-20 Lower bound: Upper bound:
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9-21 The 95% confidence interval for the mean bacteria count in pasteurized milk is (3.52, 9.30). Interpretation: We are 95% confident that the true mean for the bacteria count in pasteurized milk is between 3.52 and 9.30.
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9-22 Parallel Example 5: The Effect of Outliers Suppose a student miscalculated the amount of bacteria and recorded a result of 2.3 x 10 5. We would include this value in the data set as 23.0. What effect does this additional observation have on the 95% confidence interval?
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9-23 Boxplot of CFU/mL Solution: Checking Normality and Existence of Outliers
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9-24 Lower bound: Upper bound: The 95% confidence interval for the mean bacteria count in pasteurized milk, including the outlier is (3.86, 11.52). Solution
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9-25 CONCLUSIONS: With the outlier, the sample mean is larger because the sample mean is not resistant With the outlier, the sample standard deviation is larger because the sample standard deviation is not resistant Without the outlier, the width of the interval decreased from 7.66 to 5.78. s 95% CI Without Outlier 6.414.55(3.52, 9.30) With Outlier 7.696.34(3.86, 11.52)
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