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Suppose X1,...,Xn ~ bernoulli(θ) a) Prove that the mle [θ^(1-θ^)] is asymptotically efficient. Show all work...

Suppose X1,...,Xn ~ bernoulli(θ)

a) Prove that the mle [θ^(1-θ^)] is asymptotically efficient. Show all work

b) Calculate V[θ^(1-θ^)]. show all work

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