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Chapter 4. Inference about Process Quality Random Sample Statistics Chi-square (2) Distribution mean n variance 2 2n Let x1 , x2 , x3 ,..., xn be randome sample from N , 2 . y has a chi-square distribution with n -1 degree of freedom. t Distribution y has a chi-square distribution. x has standard normal distribution. mean 0 variance 2 k for k 2. k 2 y degree of freedom k k , t distribution N 0,1 F Distribution w, y : independent chi-square distributions with degrees of freedom u, v. w/u Fu ,v y/v Fu ,v is distributed with u numerator degrees of freedom, and v denominator. Estimator: estimates probability parameter from samples Good Characteristics for Estimators • Unbiased • Minimum variance •As n gets large the bias goes to zero Let x1 , x2 , x3 ,..., xn be random sample from N , 2 . Relative range: W R E (W ) d 2 Hypothesis Testing Alternative Hypothesis Null Hypothesis •In this example, H1 is a two-sided alternative hypothesis P type I error P reject H 0 | H 0 is true : producer's risk P type II error P fail to reject H 0 | H 0 is false : consumer's risk power =1 P reject H 0 | H 0 is false •H1 is a two-sided alternative hypothesis. •The procedure for testing this hypothesis is to: take a random sample of n observations on the random variable x, compute the test statistic, and reject H0 if |Z0| > Z/2, where Z/2 is the upper /2 percentage point of the standard normal distribution. One-Sided Alternative Hypotheses • In some situations we may wish to reject H0 only if the true mean is larger than µ0 – Thus, the one-sided alternative hypothesis is H1: µ>µ0, and we would reject H0: µ=µ0 only if Z0>Zα • If rejection is desired only when µ<µ0 – Then the alternative hypothesis is H1: µ<µ0, and we reject H0 only if Z0<−Zα Confidence Interval → If P ( L ≤ μ ≤ U ) = 1- α L ≤ μ ≤ U is 100 (1- α) % confidence interval. If the variance is known. • For the two-sided alternative hypothesis, reject H0 if |t0| > t/2,n-1, where t/2,n-1, is the upper /2 percentage of the t distribution with n 1 degrees of freedom • For the one-sided alternative hypotheses, • If H1: µ1 > µ0, reject H0 if t0 > tα,n − 1, and • If H1: µ1 < µ0, reject H0 if t0 < −tα,n − 1 • One could also compute the P-value for a t-test t0.025, 14 = 2.145. Thus, we should accept H0. • Section 3-3.4 describes hypothesis testing and confidence intervals on the variance of a normal distribution Suppose, out of n samples chosen, x samples belongs to a subclass with probability p. Confidence Intervals on a Population Proportion For large n and p, use normal approximation. For large n and small p, use Poisson approximation. For small n, use binomial distribution. 1 n1 x1 x1i n1 i 1 1 x2 n2 n2 x i 1 2i E x1 x2 E x1 E x2 1 2 Var x1 x2 Var x1 Var x2 Z 12 n1 N (0,1) 22 n2 Z0 Z / 2 or Z0 Z / 2 Two independent samples of size n1 and n2. Of them, x1 and x2 belong to the class of interest. Estimators: pˆ1 Z N (0,1) x1 n1 pˆ 2 x2 n2 More Two Populations Analysis of Variance (ANOVA) Linear staticstical model yij i ij for i 1, 2,3,..., a and j=1,2,3,...,n yij : (ij ) th observation (random variable) : overall mean i : parameter for i th treatment (i i ) ij : random error component ij N (0, 2 ) If H0 is true: If H1 is true: Error mean square: MS E SS E an unbiased estimator of 2 a(n 1) For hypothesis H0 testing, use with a-1 and a(n-1) degrees of freedom. Alternative formulas for computing efficiency residual: eij yij yi