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9.3 Confidence Interval for a Population Mean Monday, May 8, 2017 Conditions 1. Random sample 2. Sample size n is large n 30 if n<30, pop. dist. must be approx normal (if not told and have data graph it (boxplot) to show symmetry and no outliers) 3. , pop std dev known (drawback) Confidence Interval for Pop Mean I F x z *G J Hn K When is unknown! • We use s to estimate • This results in a new standardized variable t x t s n • s introduces extra variability (t dist. is more spread out than z) • ex. IQ tests are normed (normally distributed) with a m = 100 and s = 15. A random sample of 100 students from a high school has a mean IQ score of 112 and standard deviation of 16. Calculate a 95% CI for IQ scores at this school. • if you have a known population SD, use it—use a z-interval! • 1. Describe variable • 2. requirements: randomness/large sample/independence • 3. formula/substitution: • • 4. compute interval: • • 5. answer in context of the problem: • 1. Describe variable of interest – x is the estimate of the average IQ score at this school ( x is used to estimate μ) • 2. requirements: randomness/large sample/independence – told have a random sample – large enough sample n=100≥30 – reasonable to assume more than 1000 students so n≤10%N – given the population standard deviation σ • OK to use a z-interval 3. formula/substitution: 95% CI : x z * n 15 112 196 . 100 112 196 . 15 . bg 4. compute interval: – 95% CI: 112 ± 2.94 5. answer in context of the problem: – I am 95% confident that the true mean IQ score of students at this school is contained in the interval (109.06, 114.94) t distribution: • Characterized by degrees of freedom (df) like normal curve characterized by its mean and standard deviation • Bell-shaped and centered at zero • More spread out than z curve • As df increases, spread of t curve decreases • As df increases, t curve approached z curve • See figure 9.6 pg. 498 t distribution: s I F x t *G J Hn K • Interval for becomes: • 3rd condition becomes : • is unknown, use s to estimate and t dist with ______ df. • Ex 9.8 Executive Salaries • Ex 9.9 Walking a Straight Line • Ex 9.10 Housework t distribution: Choosing the Sample Size • Set margin of error value given equal to margin of error part of CI formula and solve for n • Ex 9.11 Cost of textbooks • (range is reasonable estimate of and z* for t*) • ex. Questionnaires were sent to a SRS of 160 major U.S. hotel chain managers and 114 responses were returned. The average reported time that the managers had spent with their current company was 11.78 years with standard deviation of 3.2 years. Give a 99% confidence interval for the time spent by all U.S. hotel chain managers. • not given a population SD—use a t-interval! • 1. describe variable • 2. requirements: randomness/large sample/independence • 3. formula/substitution: • 4. compute confidence interval: • 5. answer in context of the problem: • 1. Describe variable: – x is the average time managers have spent with their current company ( estimate μ) x is used to 2. requirements: randomness/large sample/independence – told have a SRS – large enough sample n = 114 which is ≥ 30 – reasonable to assume there are more than 1140 hotel managers so n ≤ 10%N • OK to use a t-interval 3. formula/substitution: df = n–1 = 114–1=113 use df =100 on table B s 99% CI : x tn 1 n 3.2 1178 . 2.626 114 1178 . 2.626 .2997 b g 4. compute confidence interval: – 11.78 ± 0.787 5. answer in context of the problem: – I am 99% confident that the interval 10.993 to 12.567 contains the true mean number of years spent by U.S. hotel chain managers with their current companies.