In Exercise 8.8, we considered a random sample of size 3 from an exponential distribution with density function given by f (y) = $ (1/)ey/ , 0 < y, 0, elsewhere, and determined that 1 = Y1, 2 = (Y1 +Y2)/2, 3 = (Y1 +2Y2)/3, and 5 = Y are all unbiased estimators for . Find the efficiency of 1 relative to 5, of 2 relative to 5, and of 3 relative to 5.
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Textbook Solutions for Mathematical Statistics with Applications
Question
Refer to Exercise 9.21. Suppose that Y1, Y2,..., Yn is a random sample of size n from a population for which the first four moments are finite. That is, m 1 = E(Y1) < , m 2 = E(Y 2 1 ) < , m 3 = E(Y 3 1 ) < , and m 4 = E(Y 4 1 ) < . (Note: This assumption is valid for the normal and Poisson distributions in Exercises 9.21 and 9.22, respectively.) Again, assume that n = 2k for some integer k. Consider 2 = 1 2k k i=1 (Y2i Y2i1) 2 . a Show that 2 is an unbiased estimator for 2. b Show that 2 is a consistent estimator for 2. c Why did you need the assumption that m 4 = E(Y 4 1 ) < ?
Solution
The first step in solving 9 problem number 23 trying to solve the problem we have to refer to the textbook question: Refer to Exercise 9.21. Suppose that Y1, Y2,..., Yn is a random sample of size n from a population for which the first four moments are finite. That is, m 1 = E(Y1) < , m 2 = E(Y 2 1 ) < , m 3 = E(Y 3 1 ) < , and m 4 = E(Y 4 1 ) < . (Note: This assumption is valid for the normal and Poisson distributions in Exercises 9.21 and 9.22, respectively.) Again, assume that n = 2k for some integer k. Consider 2 = 1 2k k i=1 (Y2i Y2i1) 2 . a Show that 2 is an unbiased estimator for 2. b Show that 2 is a consistent estimator for 2. c Why did you need the assumption that m 4 = E(Y 4 1 ) < ?
From the textbook chapter Properties of Point Estimators and Methods of Estimation you will find a few key concepts needed to solve this.
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