cw9.2 Let Yi, ½, . .. , Yn be a random sample from a Pois(0) distribution....
1. (a) Let Yi,... , Yn be a random sample from a distribution with mean θ and finite variance σ2. Find the BLUE of θ and justify that it is, in fact, the Best Linear Unbiased Estimate. sample variance. 1. (a) Let Yi,... , Yn be a random sample from a distribution with mean θ and finite variance σ2. Find the BLUE of θ and justify that it is, in fact, the Best Linear Unbiased Estimate. sample variance.
Problem 2.1. Let Y1, ...,Yn be a random sample from a uniform distribution on the interval [0 – 1,20 + 1]. a. Find the density function of X = Y;-0 (note that Yi ~ Uf0 - 1,20 + 1]). b. Find the density function of Y(n) = max{Y;, i = 1,...,} c. Find a moment estimator of . d. Use the following data to obtain a moment estimate for 4: 11.72 12.81 12.09 13.47 12.37.
1. Let Y1, . . . ,Y,, be a random sample from a population with density function 0, otherwise (a) Find the method of moments estimator of θ (b) Show that Yan.-max(Yi, . . . ,%) is sufficient for 02] (Hint: Recall the indicator function given by I(A)1 if A is true and 0 otherwise.) (c) Determine the density function of Yn) and hence find a function of Ym) that is an unbiased estimator of θ (d) Find c so...
Let Y1, Y2, ..., Yn be independent random variables each having uniform distribution on the interval (0, θ). (a) Find the distribution of Y(n) and find its expected value. (b) Find the joint density function of Y(i) and Y(j) where 1 ≤ i < j ≤ n. Hence find Cov(Y(i) , Y(j)). (c) Find var(Y(j) − Y(i)). Let Yİ, Ya, , Yn be independent random variables each having uniform distribu- tion on the interval (0, 6) (a) Find the distribution...
. Let Yi.... Yn be a random sample from a distribution with the density function 393 fe(y) =- Is there a UMP test at level α for testing Ho : θ test? vs. Hi : θ > 6? If so, what is the . Let Yi.... Yn be a random sample from a distribution with the density function 393 fe(y) =- Is there a UMP test at level α for testing Ho : θ test? vs. Hi : θ >...
2. Let Yı, ..., Yn be a random sample from an Exponential distribution with density function e-, y > 0. Let Y(1) minimum(Yi, , Yn). (a) Find the CDE of Y) b) Find the PDF of Y (c) Is θ-Yu) is an unbiased estimator of θ? Show your work. (d) what modification can be made to θ so it's unbiased? Explain.
em 3. Let Xi. A.2. . . . A., be i. i.d. random variables from an exponential diatribatnn-nsmesn be i.i.d. random variables from an exponential distribution with mean Ame and let } samples are independent. Recall that an exponetial random variable with mesn 9 hiss deaity 0 (a) Assuming that θ = θ-θ2, find the MLE of θ when X!, . . , Xn and Yi, ,Yn are observed. (b) Find the LRT to test the hypothesis that θ,-, versus...
Suppose you have a random sample yi, i = 1, ..., n, from a distribution such that E[yi) = 0 and Var(yi) = 02. - Yi is the sample (i.) Find the asymptotic distribution of ny, where y = average. (ii.) Find the asymptotic distribution of C(GP) = ?. Is C(02) asymptotically pivotal for o2? Explain. (iii.) Using the result in (ii) provide an asymptotic 95% confidence interval for o(if you did not find the asymptotic distribution at point (ii)...
4. Let Yi, ½, . . . , Yn be a random sample from some pdf/pmf f(y; θ)·Let W be a point estimator h(y, Y2, . . . , Yn) for θ. The bias of W as a point estimator for θ is defined as W Blase(W) = E(W)- The mean square error of W is defined as MSEe(W) = E(W-0)2 (a) Using properties of expected values, and the definition of variance from PSTAT 120A/B, show that MSEe(W) = Vare(W)...
1. Suppose Yi, ½ . . . , Yn is a random sample of n independent observations from a distribution with pdf 202 fY()otherwise. (a) Find the MLE for θ (c) Use the pivotal quantity to find a 100(1-a)% CI for θ 1. Suppose Yi, ½ . . . , Yn is a random sample of n independent observations from a distribution with pdf 202 fY()otherwise. (a) Find the MLE for θ (c) Use the pivotal quantity to find a...