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Unit 6 Confidence Intervals If you arrive late (or leave early) please do not announce it to everyone as we get side tracked, instead send me an email. 1 Point Estimate for Population μ Point Estimate • A single value estimate for a population parameter • Most unbiased point estimate of the population mean μ is the sample mean x Estimate Population with Sample Parameter… Statistic x Mean: μ 2 Example: Point Estimate for Population μ Market researchers use the number of sentences per advertisement as a measure of readability for magazine advertisements. The following represents a random sample of the number of sentences found in 50 advertisements. Find a point estimate of the population mean, . (Source: Journal of Advertising Research) 9 20 18 16 9 9 11 13 22 16 5 18 6 6 5 12 25 17 23 7 10 9 10 10 5 11 18 18 9 9 17 13 11 7 14 6 11 12 11 6 12 14 11 9 18 12 12 17 11 20 3 Solution: Point Estimate for Population μ The sample mean of the data is x 620 x 12.4 n 50 Your point estimate for the mean length of all magazine advertisements is 12.4 sentences. 4 Interval Estimate Interval estimate • An interval, or range of values, used to estimate a population parameter. Point estimate ( 12.4 • ) Interval estimate How confident do we want to be that the interval estimate contains the population mean μ? 5 Level of Confidence Level of confidence c • The probability that the interval estimate contains the population parameter. c is the area under the c standard normal curve between the critical values. ½(1 – c) ½(1 – c) -zc z=0 Critical values z zc Use the Standard Normal Table to find the corresponding z-scores. The remaining area in the tails is 1 – c . 6 Level of Confidence • If the level of confidence is 90%, this means that we are 90% confident that the interval contains the population mean μ. c = 0.90 ½(1 – c) = 0.05 ½(1 – c) = 0.05 zc -zc = -1.645 z=0 zc =zc1.645 z The corresponding z-scores are +1.645. 7 Sampling Error Sampling error • The difference between the point estimate and the actual population parameter value. • For μ: the sampling error is the difference x – μ μ is generally unknown x varies from sample to sample 8 Margin of Error Margin of error • The greatest possible distance between the point estimate and the value of the parameter it is estimating for a given level of confidence, c. • Denoted by E. E zcσ x zc σ n When n 30, the sample standard deviation, s, can be used for . • Sometimes called the maximum error of estimate or error tolerance. 9 Example: Finding the Margin of Error Use the magazine advertisement data and a 95% confidence level to find the margin of error for the mean number of sentences in all magazine advertisements. Assume the sample standard deviation is about 5.0. 10 Solution: Finding the Margin of Error • First find the critical values 0.95 0.025 0.025 zc -zc = -1.96 z=0 zczc= 1.96 z 95% of the area under the standard normal curve falls within 1.96 standard deviations of the mean. (You can approximate the distribution of the sample means with a normal curve by the Central Limit Theorem, because n ≥ 30.) 11 Solution: Finding the Margin of Error E zc n 1.96 zc s n You don’t know σ, but since n ≥ 30, you can use s in place of σ. 5.0 50 1.4 You are 95% confident that the margin of error for the population mean is about 1.4 sentences. 12 Confidence Intervals for the Population Mean A c-confidence interval for the population mean μ • x E x E where E zc n • The probability that the confidence interval contains μ is c. 13 Constructing Confidence Intervals for μ Finding a Confidence Interval for a Population Mean (n 30 or σ known with a normally distributed population) In Words 1. Find the sample statistics n and x. 2. Specify , if known. Otherwise, if n 30, find the sample standard deviation s and use it as an estimate for . In Symbols x x n (x x )2 s n 1 14 Constructing Confidence Intervals for μ In Words 3. Find the critical value zc that corresponds to the given level of confidence. 4. Find the margin of error E. 5. Find the left and right endpoints and form the confidence interval. In Symbols Use the Standard Normal Table. E zc n Left endpoint: x E Right endpoint: x E Interval: xE xE 15 Example: Constructing a Confidence Interval Construct a 95% confidence interval for the mean number of sentences in all magazine advertisements. Solution: Recall x 12.4 and E = 1.4 Left Endpoint: xE 12.4 1.4 11.0 Right Endpoint: xE 12.4 1.4 13.8 11.0 < μ < 13.8 16 Solution: Constructing a Confidence Interval 11.0 < μ < 13.8 11.0 ( 12.4 13.8 • ) With 95% confidence, you can say that the population mean number of sentences is between 11.0 and 13.8. 17 Example: Constructing a Confidence Interval σ Known A college admissions director wishes to estimate the mean age of all students currently enrolled. In a random sample of 20 students, the mean age is found to be 22.9 years. From past studies, the standard deviation is known to be 1.5 years, and the population is normally distributed. Construct a 90% confidence interval of the population mean age. 18 Solution: Constructing a Confidence Interval σ Known • First find the critical values c = 0.90 ½(1 – c) = 0.05 ½(1 – c) = 0.05 zc -zc = -1.645 z=0 zc =zc1.645 z zc = 1.645 19 Solution: Constructing a Confidence Interval σ Known • Margin of error: E zc n 1.645 • Confidence interval: Left Endpoint: xE 22.9 0.6 22.3 1.5 20 0.6 Right Endpoint: xE 22.9 0.6 23.5 22.3 < μ < 23.5 20 Solution: Constructing a Confidence Interval σ Known 22.3 < μ < 23.5 Point estimate 22.3 ( x E 22.9 23.5 x xE • ) With 90% confidence, you can say that the mean age of all the students is between 22.3 and 23.5 years. 21 Interpreting the Results • μ is a fixed number. It is either in the confidence interval or not. • Incorrect: “There is a 90% probability that the actual mean is in the interval (22.3, 23.5).” • Correct: “If a large number of samples is collected and a confidence interval is created for each sample, approximately 90% of these intervals will contain μ. 22 Sample Size • Given a c-confidence level and a margin of error E, the minimum sample size n needed to estimate the population mean is zc n E • If is unknown, you can estimate it using s provided you have a preliminary sample with at least 30 members. 2 23 Example: Sample Size You want to estimate the mean number of sentences in a magazine advertisement. How many magazine advertisements must be included in the sample if you want to be 95% confident that the sample mean is within one sentence of the population mean? Assume the sample standard deviation is about 5.0. 24 Solution: Sample Size • First find the critical values 0.95 0.025 0.025 zc -zc = -1.96 z=0 zczc= 1.96 z zc = 1.96 25 Solution: Sample Size zc = 1.96 s = 5.0 E=1 zc 1.96 5.0 n 96.04 1 E 2 2 When necessary, round up to obtain a whole number. You should include at least 97 magazine advertisements in your sample. 26 Section 6.2 Objectives • Interpret the t-distribution and use a t-distribution table • Construct confidence intervals when n < 30, the population is normally distributed, and σ is unknown 27 The t-Distribution • When the population standard deviation is unknown, the sample size is less than 30, and the random variable x is approximately normally distributed, it follows a t-distribution. x - t s n • Critical values of t are denoted by tc. 28 Properties of the t-Distribution 1. The t-distribution is bell shaped and symmetric about the mean. 2. The t-distribution is a family of curves, each determined by a parameter called the degrees of freedom. The degrees of freedom are the number of free choices left after a sample statistic such as x is calculated. When you use a t-distribution to estimate a population mean, the degrees of freedom are equal to one less than the sample size. d.f. = n – 1 Degrees of freedom 29 Properties of the t-Distribution 3. The total area under a t-curve is 1 or 100%. 4. The mean, median, and mode of the t-distribution are equal to zero. 5. As the degrees of freedom increase, the t-distribution approaches the normal distribution. After 30 d.f., the tdistribution is very close to the standard normal zdistribution. The tails in the tdistribution are “thicker” than those in the standard normal distribution. d.f. = 2 d.f. = 5 Standard normal curve t 0 30 Example: Critical Values of t Find the critical value tc for a 95% confidence when the sample size is 15. Solution: d.f. = n – 1 = 15 – 1 = 14 Table 5: t-Distribution tc = 2.145 31 Solution: Critical Values of t 95% of the area under the t-distribution curve with 14 degrees of freedom lies between t = +2.145. c = 0.95 t -tc = -2.145 tc = 2.145 32 Confidence Intervals for the Population Mean A c-confidence interval for the population mean μ s • x E x E where E tc n • The probability that the confidence interval contains μ is c. 33 Confidence Intervals and t-Distributions In Words 1. Identify the sample statistics n, x , and s. 2. Identify the degrees of freedom, the level of confidence c, and the critical value tc. 3. Find the margin of error E. In Symbols x (x x )2 x s n 1 n d.f. = n – 1 E tc s n 34 Confidence Intervals and t-Distributions In Words 4. Find the left and right endpoints and form the confidence interval. In Symbols Left endpoint: x E Right endpoint: x E Interval: xE xE 35 Example: Constructing a Confidence Interval You randomly select 16 coffee shops and measure the temperature of the coffee sold at each. The sample mean temperature is 162.0ºF with a sample standard deviation of 10.0ºF. Find the 95% confidence interval for the mean temperature. Assume the temperatures are approximately normally distributed. Solution: Use the t-distribution (n < 30, σ is unknown, temperatures are approximately distributed.) 36 Solution: Constructing a Confidence Interval • n =16, x = 162.0 s = 10.0 c = 0.95 • df = n – 1 = 16 – 1 = 15 • Critical Value Table 5: t-Distribution tc = 2.131 37 Solution: Constructing a Confidence Interval • Margin of error: s 10 E tc 2.131 5.3 n 16 • Confidence interval: Left Endpoint: xE 162 5.3 156.7 Right Endpoint: xE 162 5.3 167.3 156.7 < μ < 167.3 38 Solution: Constructing a Confidence Interval • 156.7 < μ < 167.3 Point estimate 156.7 ( x E 162.0 •x 167.3 ) xE With 95% confidence, you can say that the mean temperature of coffee sold is between 156.7ºF and 167.3ºF. 39 Normal or t-Distribution? Is n 30? Yes No Is the population normally, or approximately normally, distributed? Use the normal distribution with σ E zc n If is unknown, use s instead. No Cannot use the normal distribution or the t-distribution. Yes Use the normal distribution with E z σ Yes Is known? No c n Use the t-distribution with E tc s n and n – 1 degrees of freedom. 40 Section 6.3 Point Estimate for Population p Population Proportion • The probability of success in a single trial of a binomial experiment. • Denoted by p Point Estimate for p • The proportion of successes in a sample. • Denoted by x number of successes in sample pˆ n number in sample read as “p hat” 41 Point Estimate for Population p Estimate Population with Sample Parameter… Statistic Proportion: p p̂ Point Estimate for q, the proportion of failures • Denoted by qˆ 1 pˆ • Read as “q hat” 42 Example: Point Estimate for p In a survey of 1219 U.S. adults, 354 said that their favorite sport to watch is football. Find a point estimate for the population proportion of U.S. adults who say their favorite sport to watch is football. (Adapted from The Harris Poll) Solution: n = 1219 and x = 354 x 354 pˆ 0.290402 29.0% n 1219 43 Confidence Intervals for p A c-confidence interval for the population proportion p • pˆ E p pˆ E where E zc pq ˆˆ n • The probability that the confidence interval contains p is c. 44 Constructing Confidence Intervals for p In Words In Symbols 1. Identify the sample statistics n and x. 2. Find the point estimate p̂. 3. Verify that the sampling distribution of p̂ can be approximated by the normal distribution. 4. Find the critical value zc that corresponds to the given level of confidence c. pˆ x n npˆ 5, nqˆ 5 Use the Standard Normal Table 45 Constructing Confidence Intervals for p In Words 5. Find the margin of error E. 6. Find the left and right endpoints and form the confidence interval. In Symbols E zc pq ˆˆ n Left endpoint: p̂ E Right endpoint: p̂ E Interval: pˆ E p pˆ E 46 Example: Confidence Interval for p In a survey of 1219 U.S. adults, 354 said that their favorite sport to watch is football. Construct a 95% confidence interval for the proportion of adults in the United States who say that their favorite sport to watch is football. Solution: Recall pˆ 0.290402 qˆ 1 pˆ 1 0.290402 0.709598 47 Solution: Confidence Interval for p • Verify the sampling distribution of p̂ can be approximated by the normal distribution npˆ 1219 0.290402 354 5 nqˆ 1219 0.709598 865 5 • Margin of error: E zc pq (0.290402) (0.709598) ˆˆ 1.96 0.025 n 1219 48 Solution: Confidence Interval for p • Confidence interval: Left Endpoint: pˆ E 0.29 0.025 0.265 Right Endpoint: pˆ E 0.29 0.025 0.315 0.265 < p < 0.315 49 Solution: Confidence Interval for p • 0.265 < p < 0.315 Point estimate 0.265 ( p̂ E 0.29 0.315 p̂ p̂ E • ) With 95% confidence, you can say that the proportion of adults who say football is their favorite sport is between 26.5% and 31.5%. 50 Sample Size • Given a c-confidence level and a margin of error E, the minimum sample size n needed to estimate p is 2 zc ˆ ˆ n pq E • This formula assumes you have an estimate for p̂ and qˆ . • If not, use pˆ 0.5 and qˆ 0.5. 51 Example: Sample Size You are running a political campaign and wish to estimate, with 95% confidence, the proportion of registered voters who will vote for your candidate. Your estimate must be accurate within 3% of the true population. Find the minimum sample size needed if 1. no preliminary estimate is available. Solution: Because you do not have a preliminary estimate for p̂ use pˆ 0.5 and qˆ 0.5. 52 Solution: Sample Size • c = 0.95 zc = 1.96 2 E = 0.03 2 zc 1.96 ˆ ˆ (0.5)(0.5) n pq 1067.11 0.03 E Round up to the nearest whole number. With no preliminary estimate, the minimum sample size should be at least 1068 voters. 53 Example: Sample Size You are running a political campaign and wish to estimate, with 95% confidence, the proportion of registered voters who will vote for your candidate. Your estimate must be accurate within 3% of the true population. Find the minimum sample size needed if 2. a preliminary estimate gives pˆ 0.31 . Solution: Use the preliminary estimate pˆ 0.31 qˆ 1 pˆ 1 0.31 0.69 54 Solution: Sample Size • c = 0.95 zc = 1.96 2 E = 0.03 2 zc 1.96 ˆ ˆ (0.31)(0.69) n pq 913.02 0.03 E Round up to the nearest whole number. With a preliminary estimate of pˆ 0.31, the minimum sample size should be at least 914 voters. Need a larger sample size if no preliminary estimate is available. 55 • End, any questions? 56