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Lei, X, , X,,. . . , X be a random sample from X ^, ,(r) 1 e (zの , 32 O (a) Derive the pdf f(x) and show that the mle of θ is θ*--min{ Xi } [HINT: Compute L(θ*)/L(0) for θ 0 ] (b) Show that Ely-D+ HINT: Derive the cdf of Y, to show W = y-8 ~ Exp(λ = n) | (c) Is Y-n [HINT: Varly-n] = Varly-.. Compare to the CRLB = 1/n ] an efficient estimator of θ ? Explain the contradiction !

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