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7.3 SAMPLE MEANS Activity: Penny for your Thoughts 1 Example: Making Money p443 2 THE SAMPLING DISTRIBUTION OF X: MEAN AND STANDARD DEVIATION Mean and Standard Deviation of the Sampling Distribution of x. Suppose that x(bar) is the mean of an SRS of size n drawn from a large population mean μ and standard deviation σ. Then The mean of the sampling distribution of x(bar) is μx = μ The standard deviation of the sampling distribution of x is σx = σ/√n as long as the 10% condition is satisfied: n ≤ (1/10)N AP Exam Tip: Notation matters. The symbols p, x, p, μp, σp, μx, and σx all have specific and different meanings. Either use notation correctly or don't use it at all. You can expect to lose credit if you use incorrect notation. 3 Example: This Wine Stinks p444 4 SAMPLING FROM A NORMAL POPULATION Activity p. 446 5 Sampling Distribution of a Sample Mean from a Normal Population Suppose that a population is Normally distributed with mean μ and standard deviation σ. Then the sampling distribution of x(bar) has the Normal distribution with mean μ and standard deviation σ/√n, provided that the 10% condition is met. 6 Example: p447 Young Women's Heights a) μ = 64.5 and σ = 2.5 inches X = 66.5 standardize z = (66.564.5)/2.5 = .8 tableA P(X>66.5) = P(z>.8) = 1.7881 = .2119 b) 10% condition met Standardize: z = (66.564.5)/.79 = 2.53 P(z>2.53) = 1 .9943 = .0057 very unlikely 7 THE CENTRAL LIMIT THEOREM Activity: p449 8 Definition: Central Limit Theorem (CLT) Draw an SRS fo size n from any population with mean μ and finite standard deviation σ. The central limit theorem (CLT) says that when n is large, the sampling distribution of the sample mean x (bar) is approximately Normal. Example: A Strange Population Distribution 9 Normal Condition for Sample Means If the population distribution is Normal, then so is the sampling distribution of x(bar). This is true no matter what the sample size n is. If the population distribution is not Normal, the central limit theorem tells us that the sampling distribution of x will be approximately Normal in most cases if n ≥ 30. 10 Example: Servicing Air Conditioners p451 11 SHAPE OF THE SAMPLING DISTRIBUTION 1. If the sampling is from a Normal Distribution then the μx = μ 2. The standard deviation of the sample mean is σx = σ/√n 3. The Shape of the sampling distribution of the sample mean is Normal So we can get Z scores for our observations where Z = (x μ)/(σ/√n) SHAPE OF THE SAMPLING DISTRIBUTION Continued 1. If the sampling is from a Non Normal Distribution then the μx = μ 2. The standard deviation of the sample mean is σx = σ/√n 3. and By the Central Limit Theorem if n ≥ 30 the sampling distribution of the sample mean is Approximately Normal. So we can use Z scores Z = (x μ)/(σ/√n) 12 Example: A highway construction zone has a speed limit of 40mph. The actual speed of the vehicles are normally distributed with a mean of 46mph and a standard deviation of 3 mph. Find the probability that the mean speed of a random sample of 20 cars going through the zone is more than 45mph. Write out info that you know! Normally Dist. P(x > 45) μ = 46 σ = 3 n = 20 *Must standardize into Z scores!! where Z = (x μ)/(σ/√n) P(Z > (4546)/(3/√20)) P(Z > 1.49) Go to the Table Remember Z table gives area to the LEFT total area chart(1.49) So P(Z > 1.49) = 1 .0681 = .9319 Implies there is a 93.19% chance that cars are going over 45mph in the construction zone. 13 Example: Construction Zone Less than 45.5 mph Normally Dist. μ = 46 σ = 3 n = 20 P(x < 45.5) = P(Z < (45.546)/(3/√20)) = P(Z < .75) Table (.75) = .2266 So 22.66% chance that cars are traveling less than 45.5 mph through zone. 14 Example: Speed zone Between 44.5 and 47 mph Normally Dist. μ = 46 σ = 3 n = 20 P( 44.5 < Xbar < 47) convert to Z P((44.546)/(3/√20)) < Z < (4746)/3/√20)) P (2.24 < Z < 1.49) go to chart .9319 .0125 = .09194 = 9.194% that a car will be traveling between 44.5 and 47 mph through the construction zone. 15 Example: Time that college students spend studying per week have a distribution that is Skewed to the Right with a mean of 8.4 hours and a standard deviation of 2.7 hours. Find the probability that the mean studying time for a random sample of 45 students is between 8 and 9 hours of studying. Skewed Right distribution but CLT allows us to use Normal since n ≥30 μ = 8.4 σ = 2.7 n = 45 P(8 < xbar < 9) = standardize P((88.4)/(2.7/√45) < Z < (98.4)/2.7/√45)) = P(.99 < Z < 1.49) z = .1611 and .9319 so P = .9319 .1611 = .7708 therefore a 77.08 % chance that the students would study between 8 and 9 hours. 16 Example: College Study Time Less than 8 hours μ = 8.4 σ = 2.7 n = 45 P(xbar < 8) = P (Z < (88.4)/(2.7/√45)) = P(Z < .99) z = .1611 so 16.11% chance of studying less than 8 hours. 17 Example: Assume the weights of all packages of a brand of cookies are Normally distributed with μ = 32 ounces and σ = .3 ounces. Find the probability that the mean weight of a random sample of 20 packages will be between 31.8 ounces and 31.9 ounces from this brand. Normal μ = 32 σ = .3 n = 20 P(31.8 < xbar < 31.9) P((31.832)/(.3/√20) < Z < (31.932)/(.3/√20)) P( 2.98 < Z < 1.49) go to chart z = .0681 .0014 = .0667 6.67% that the cookies will weigh between 31.8 and 31.9 ounces. 18 Example: Consumers in the US owed an average of $7868 on their credit cards in 2004. Suppose the shape of the prob. distribution is unknown but its mean is $7868 and σ = $2160. What is the probability that the mean of the current cc debt from a random sample of 81 US consumer is lower than population mean by $320 or more. μ = 7868 σ = 2160 n = 81 Dist type unknown but CLT allows us to use Normal P(xbar < (μ320)) = P(xbar < 7548) = P(Z < (75487868)/(2160/√81) = P(Z < 1.33) chart = .09181 So 9.181% chance that the debt is lower than pop. mean by $320 or more 19 Example for Sample Proportions: A survey of all medium and large corporations showed that 64% of them offer a retirement plan. Suppose 50 corporations are randomly sampled. What is the probability tat the sample proportion of the corporations that offer retirement plans will be between .54 and .61? p = .64 n = 50 need to check criteria for approx. normal np >5 and n(1p) >5 so np = (.64)(50) = 32 >5 and n(1p) = 50(.36) = 18 > 5 We can apply CLT and standardize P(.54 < phat < .61) app. Normal = Z = (p hat p)/√(p(1p)/n) P((.54 .34)/√((.64)(.36)/50) < Z < (.61.64)/√((.64)(.36)/50) P( 1.47 < Z < .44) .3300 .0708 = .2592 20 Ex: Retirement What is the probability that the sample proportion is greater tahn .71 P(phat > .71) appr. P(Z > (.71 .64)/√(.64)(.35)/50)) = P(Z > 1.03) 1 ch(1.03) = 1 .8485 = .1515 21 Ex: A mayor in city running for reelection. He claims that he is favored by 53% of voters in city. Assume his claim is true. What is the probability that in a random sample of 400 registered voters that less than 49% will favor the mayor? p = .53 n = 400 np = 212>5 need to check np>5 and n(1p) > 5 so we can use CLT n(1p) = 188 > 5 approx. Normal P(phat < .49) = approx P(Z < (.49.53)/√(.53)(.47)/400) P(Z < 1.60) ch(1.60) = .0548 22 Ex: 38% of adult Americans say they are very satisfied with their lives. Suppose this is true. In a random sample of 1000 adults, what is the probability that between .40 and .42 adults will respond that they are satisfied with their lives? p = .38 n = 1000 check np and n(1p) P(.4 < phat < .42) approx. P ((.4.38)/√(.38)(.62)/1000) < Z< (.42 .38)/√(.38)(.62)/1000 P(1.30 < Z < 2.61) = .9955 .9032 = .0923 23 Ex: It is known taht 85% of all orders that a warehouse receives from customers are delivered on time. In a random sample of 100 orders, what is the probability that the proportion of orders delivered on time is less than .87? p = .85 n = 100 check np and n(1p) P (phat < .87) approx. P(Z > (.87.85)/√(.85)(.15)/100) P(Z < .56) = chart (.56) = .7123 71.23% 24 Homework: p439 and p454 4346, 4955odd p454 5763odd, 6568 Chapter 7 Review Chapter 7 Practice Test Strive for 5 MC and Frappy 25