centered at population parameter Variability decreases as increase sample size"> centered at population parameter Variability decreases as increase sample size">
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Stat 301 – Day 20 Sampling Distributions for a sample proportion (cont.) (4.3)
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Announcements Lab 3 due Tuesday, lab 2 returned Thank you for mid-quarter feedback Practice problems Not on Fridays Not an expectation for every PP (see recent scoring) Time length Regularity More worked out examples, wording… What’s missing in text/index… examples at end of chapters Using R
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Top 3 lessons from Friday? Sampling variability Value of sample statistic varies from sample to sample, just due to "random sampling error” Sampling distribution has a predictable pattern (with random samples) Statistics are random variables, have a probability distribution (unknown parameters), expected value Unbiased => centered at population parameter Variability decreases as increase sample size
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Simulation With =.45, n = 25, and 500 samples With =.45, n = 75, and 500 samples
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Top 3 Lessons from Friday? Often the count follows a binomial distribution (sampling from process) or is well approximated by a binomial distribution (sampling from large population) Often the count and proportion are well modeled by a normal distribution…
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Sampling Distribution of When =.45: Center: mean.45 Spread: std dev.10 68% of samples have within +.10 of.45 95% of samples have within +.20 of.45 Would be pretty surprised to get less than 25% or more than 65% orange candies in a random sample of 25 candies from this population/process.
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Theoretical results (4.3.2)
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Why does this work? X = number of successes in n trials Probability of success, , is constant Trials are independent X follows a Binomial distribution (Ch. 3) P(X=x) = C(n,x) x (1- n-x E(X) = x C(n,x) x (1- n-x = n V(X) = (x-n ) 2 C(n,x) x (1- n-x = n (1- )
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Why does this work? = X/n is also a random variable E( ) = E(X/n) = 1/n E(X) = n /n = V( ) = V(X/n) = 1/n 2 V(X) = n (1- )/n 2 = (1- )/n
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The Central Limit Theorem (CLT) p. 309: The sampling distribution of sample proportions will approximately normal with mean equal to and standard deviation equal to as long as Random sample from large population or process (with constant probability of success) Sample size is “large” n > 10 and n(1- ) > 10
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“Technical conditions” n = 25, =.45 n = 5, =.75
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Three approaches… (p. 314) To calculate probabilities for statistics arising from a binomial process (n, ): Exact binomial calculations Simulation Normal probability approximation to binomial Mean = SD = /n Valid for “large” n
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PP 4.3.4 (p. 320) Swain vs. Alabama
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For Tuesday Lab 3 PP 4.3.2 in BB Inv 4.3.3 (a)-(c)
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