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Statistical Theory (STAT 467/667) Homework 8 Solution - Spring 2015 Department of Mathematics and Statistics, University of Nevada, Reno Problem 6.4.8 Will n = 45 be a sufficiently large sample size to test H0 : µ = 10 versus H1 : µ 6= 10 at the α = 0.05 level of significance if the experimenter wants the type II error probability to be no greater than 0.20 when µ = 12? Assume that σ = 4. Let β be the probability of type II error when µ = 12 assuming that σ = 4 at the α = 0.05 level of significance, then β = = = = P (accept H0 | µ = 12) 4 σ σ 4 P µ0 − zα/2 √ ≤ x̄ ≤ µ0 + zα/2 √ | µ = 12 = P 10 − 1.96 √ ≤ x̄ ≤ 10 + 1.96 √ | µ = 12 n n 45 45 8.831 − 12 11.169 − 12 √ √ P (8.831 ≤ x̄ ≤ 11.169 | µ = 12) = P ≤Z≤ 4/ 45 4/ 45 P (−5.315 ≤ Z ≤ −1.394) ≈ 0.0823 < 0.20. So, n = 45 is a sufficiently large sample so that type II error probability is no greater than 0.20 when µ = 12 at the α = 0.05 level of significance assuming σ = 4. Problem 6.4.11 9 = 0.064. Similarly, In this context, α is the proportion of incorrect decisions made on innocent suspects, that is 140 15 β is the proportion of incorrect decisions made on guilty suspects, which is = 0.107 in this case. A Type I 140 error (convicting an innocent defendant) would be considered more serious than a Type II error (acquitting a guilty defendant). Problem 6.4.12. An urn contains 10 chips. An unknown number of the chips are white; the others are red. We wish to test H0 : {exactly half the chips are white } versus H1 : {more than half of the chips are white }. We will draw, without replacement, three chips and reject H0 if two or more are white. Find α. Also, find β when the urn is (a) 60% white and (b) 70% white. 1 2 Let’s denote X to be the number of white chips in the sample and E be the event that exactly half of the chips are white. Then (noting that X has a hypergeometric distribution) α = = P (reject H0 | H0 is true) = P (X ≥ 2 | E) 5 5 5 5 2 1 3 0 P (X = 2 | E) + P (X = 3 | E) = + = 0.5. 10 10 3 3 (a) Let E1 be the event that the urn contains 6 white and 4 red chips. β = = P (accept H0 | E1 ) 6 4 6 4 0 3 1 2 1 P (X ≤ 1 | E1 ) = + = . 3 10 10 3 3 (b) Let E2 be the event that the urn contains 7 white and 3 red chips. β = P (accept H0 | E2 ) 7 3 7 3 0 3 1 2 11 = P (X ≤ 1 | E2 ) = + = ≈ 0.183. 60 10 10 3 3 Problem 6.4.18. An experimenter takes a sample of size 1 from a Poisson probability model with pdf pX (k) = e−λ λk /k!, k = 0, 1, 2..., and wishes to test H0 : λ = 6 vs. H1 : λ < 6 by rejecting H0 if k ≤ 2 (a) α = P (reject H0 | H0 is true) = P (X ≤ 2 | λ = 6) = P2 (b) β = P (accept H0 | λ = 4) = 1 − P (X ≤ 2 | λ = 4) = 1 − k=0 P2 e−6 6k /k! = 0.0619688 k=0 e−4 4k /k! = 0.7618967 3 Problem 6.4.21. Problem 6.5.2. Let Y1 , Y2 , ..., Y10 be a random sample from an exponential pdf with unknown parameter λ. I assume that the exponential distribution we deal with is parametrized so that its mean is 1/λ. Find the form of the GLRT for H0 : λ = λ0 versus H1 : λ 6= λ0 . What integral would have to be evaluated to determine the critical value if α were equal to 0.05? Start by writing down the parameter spaces: the full parameter space Ω = Ω0 ∪ Ω1 = {λ : λ > 0}, Ω0 = {λ0 }, and Ω1 = {λ : λ 6= λ0 , λ > 0}. The likelihood function is L(λ) = 10 Y λe−λyi = λ10 e−λ P10 i=1 yi . i=1 We find that the MLE (maximum likelihood estimate) for λ is λ̂ = 10 P10 i=1 yi . Then, the generalized likelihood ratio Λ is P10 maxΩ0 L(λ) L(λ0 ) λ10 e−λ0 i=1 yi =0 Λ= = = 10 maxΩ L(λ) L(λ̂) P 10 e−10 10 i=1 eλ0 10 10 yi e −λ0 P10 i=1 yi 10 X !10 yi . i=1 Now, by Definition 6.5.2 the generalized likelihood ratio test (GLRT) rejects H0 whenever 0 < Λ ≤ λ∗ where λ∗ is chosen so that P (0 < Λ ≤ λ∗ | H0 is true) = α, for significance level α (0.05 in this case). To compute λ∗ , we note that fΛ (t | H0 ) is the PDF of Λ when H0 is true, and then we evaluate the following integral Z λ∗ fΛ (t | H0 ) dt = 0.05 0