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Statistics for Managers 5th Edition Chapter 7 Sampling Distributions and Sampling Chapter Topics • Sampling Distributions •Sampling Distribution of the Mean •Sampling Distribution of the Proportion •The Situation of Finite Populations Sampling Distribution - Definition A sampling distribution is a probability distribution that shows the relationship between all of the possible values that a sample statistic can assume and the corresponding probabilities. The sampling distribution of the mean shows all of the possible values that the sample mean can assume and the corresponding probabilities. Sampling Distribution of the (X) mean Population = 1, 2, 3, 4 so N = 4 Sampling Distribution of X for n = 2 Samples X P(X) X P(X) 1, 2 1, 3 1, 4 2, 3 2, 4 3, 4 1.5 2.0 2.5 2.5 3.0 3.5 1/6 1/6 1/6 1/6 1/6 1/6 1.5 2.0 2.5 3.0 3.5 1/6 1/6 2/6 1/6 1/6 6/6 or Summary Measures For Sampling Distribution mX_ = S X · P ( X ) = 1.5(1/6 ) + 2.0 (1/6 ) + 2.5 (2/6 ) + 3.0 (1/6 ) + 3.5 (1/6 ) = 2.5 sX_ = = S ( X - mX ) _ 2 ·P (X) (1.5 - 2.5)2 · 1/6 + (2.0 - 2.5)2 · 1/6 + (2.5 - 2.5)2 · 2/6+ (3.0 - 2.5)2 · 1/6 + (3.5 - 2.5)2 · 1/6 = .645 Properties of Summary Measures Population Mean Equal to Sampling Mean m x = m The Standard Error (standard deviation) of the Sampling distribution is Less than Population Standard Deviation Formula: s x = s n As n increase, s x decrease. Properties of the Mean Unbiasedness Mean of sampling distribution equals population mean Efficiency Sample mean comes closer to population mean than any other unbiased estimator Consistency As sample size increases, variation of sample mean from population mean decreases Unbiasedness P(X) Unbiased m Biased X Efficiency P(X) Sampling Distribution of Median Sampling Distribution of Mean m X Consistency Larger sample size P(X) B Smaller sample size A m X When the Population is Normal Population Distribution s= 10 Central Tendency m _ = m x Variation s _ s x = n Sampling with Replacement m = 50 X Sampling Distributions n=4 s X = 5 n =16 sX = 2.5 m X-X = 50 X Central Limit Theorem As Sample Size Gets Large Enough Sampling Distribution Becomes Almost Normal regardless of shape of population X X Central Limit Theorem For a population with a mean u and a standard deviation s , the sampling distribution of the means of all possible samples of size n generated from the population will be approximately normally distributed assuming that the sample size is sufficiently large (n ≥ 30) regardless of the shape of the distribution of the population. 13 When The Population is Not Normal Central Tendency Population Distribution s = 10 mx = m Variation s x = s n Sampling with Replacement m = 50 X Sampling Distributions n=4 s X = 5 n =30 sX = 1.8 m X = 50 X Example: Central Limit Theorem The number of seconds it takes to complete a task is normally distributed with a mean of 150 seconds and a standard deviation of 10 seconds. What is the probability that a particular task takes more than 152 seconds? If a random sample of 100 tasks is drawn, what is the probability that the sample mean number of seconds it takes to complete them is more than 152? Example: Central Limit Theorem m=150 s=10 Population Sampling Distribution of X P ( X > 152 ) = .4207 P ( X > 152 when n = 100) = .0228 .0793 .4772 .4207 .0228 150 152 0 .20 Z= X-m s = X Z 152 - 150 10 = .20 150 152 0 2.00 X Z X-m 152 - 150 Z= = = 2.00 10 100 s n Population Proportions Categorical variable (e.g., gender) % population having a characteristic If two outcomes, binomial distribution Possess or don’t possess characteristic Sample proportion (ps) X number of successes = P = n sample size Sampling Distribution of the Proportion The sampling distribution of the proportion shows the relationship between all of the possible values the sample proportion can assume and the corresponding probabilities. Population Proportions π = the proportion of the population having some characteristic Sample proportion ( p ) provides an estimate of π: p= X number of items in the sample having the attribute of interest = n sample size 0≤ p≤1 p has a binomial distribution Sampling Distribution of p Approximated by a normal distribution if n ≥ 50 μp = π where P( p) Sampling Distribution .3 .2 .1 0 0 .2 .4 .6 π(1 π ) σp = n (where π = population proportion) 8 1 p Sampling Distribution of Proportion Example 40% of all patients experience dry mouth when taking a specific drug. You select a random sample of 200 patients. What is the probability that the sample proportion of patients with dry mouth would be between 40% & 43% ? Example: Sampling Distribution of Proportion Sampling Distribution sp = .0346 π p Z = π(1 π) n - .43 - .40 .40 ( 1 .40 ) 200 = .87 Standardized Normal Distribution s=1 ..3078 mp = .40 .43 p m = 0 .87 Z Sampling from Finite Sample Modify standard error if sample size (n) is large relative to population size (N ) n .05N or n / N .05 Use finite population correction factor (fpc) Standard error with FPC sX = sP = S s n N n N 1 p 1 p N n n N 1 Sampling Distribution of Proportion from Finite Population Example 40% of all 1000 patients experience dry mouth when taking a specific drug. You select a random sample of 200 patients. What is the probability that the sample proportion of patients with dry mouth would be between 40% & 43% ? Solution* P(.40 P .43) p .43 .40 z = = .97 .40 (1 .40) 1000 200 (1 ) N n 200 1000 1 n N 1 Sampling Distribution sP = .0310 Standardized Distribution sZ = 1 .3340 m p = 40 .43 P m z = 0 .97 Z Chapter Summary Introduced sampling distributions Described the sampling distribution of the mean For normal populations Using the Central Limit Theorem Described the sampling distribution of a proportion Calculated probabilities using sampling distributions Described the use of the Finite Population Correction