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7/23/2014 Probability vs. Statistics Online Review Course of Undergraduate Probability and Statistics • Probability predicts the behavior of a sample given knowledge of the population • Statistics infers properties of the population given knowledge of a sample • The two are tied together by the sampling distribution Review Lecture 10 Sampling Distribution Chris A. Mack Adjunct Associate Professor Course Website: www.lithoguru.com/scientist/statistics/review.html © Chris Mack, 2014 1 Sampling statistics probability sample © Chris Mack, 2014 2 Sampling Distribution of the Mean • Statistic: any quantity computed from values in a sample • What is the expectation of the sample mean? 1 – Sampling variability – variation of a statistic for different samples – Sampling distribution – the distribution of the statistic across all possible samples of the given size population mean , – Sample = {X1, X2, …, Xn} – Sample mean = (a random variable) – Assume each Xi is iid independent and identically distributed , 1 • Example: sample mean © Chris Mack, 2014 population • When the expectation value of the sample statistic is equal to the population statistic, we say that the sample statistic is an unbiased estimator 3 © Chris Mack, 2014 4 Sampling Distribution of the Mean Law of Large Numbers • What is the variance of the sample mean? • Let X1, X2, …, Xn be iid random variables with mean µ and variance σ 2. • Then, 1 population variance , 0 1 , Standard deviation of the sample mean © Chris Mack, 2014 → ∞ • The average of the results obtained from a large number of trials will tend to become closer to the expected value as more trials are performed Assumes an infinite population 5 © Chris Mack, 2014 6 1 7/23/2014 Central Limit Theorem Student’s t Distribution • Let X1, X2, …, Xn be iid random variables with mean µ and finite variance σ 2. • Then, • Alas, we rarely know the population variance – We estimate σ with s, the sample standard deviation • If each Xi is N(µ, σ2), let’s define the Student’s t-statistic: / is a RV with a distribution that approaches N(0,1) as → ∞ • This is true regardless of the distribution for Xi © Chris Mack, 2014 7 Student’s t Distribution / • This t is a RV with the Student’s t distribution and parameter DF = n -1 © Chris Mack, 2014 8 Sampling Distribution of the Variance • Let X1, X2, …, Xn be iid random variables with Xi ~ N(µ, σ 2) • For a sample variance S2, / 1 is a RV with a chi square distribution and parameter DF = n -1 • As DF = n -1 → ∞, the Student’s t becomes N(0,1) • For n > 30 or so, N(0,1) is a good approximation © Chris Mack, 2014 9 Chi Square Distribution 10 Review #10: What have we learned? • What is a sampling distribution, and why do we care about it? • What is the Central Limit Theorem? • What is the sampling distribution of the Mean? • What is the Student’s t distribution? • What is the chi square distribution? 1 © Chris Mack, 2014 © Chris Mack, 2014 11 © Chris Mack, 2014 12 2