1.I.7C1 . \mathrm{I} . 7 \mathrm{C} \quad

Statistics | Part IB, 2006

A random sample X1,,XnX_{1}, \ldots, X_{n} is taken from a normal distribution having unknown mean θ\theta and variance 1. Find the maximum likelihood estimate θ^M\hat{\theta}_{M} for θ\theta based on X1,,XnX_{1}, \ldots, X_{n}.

Suppose that we now take a Bayesian point of view and regard θ\theta itself as a normal random variable of known mean μ\mu and variance τ1\tau^{-1}. Find the Bayes' estimate θ^B\hat{\theta}_{B} for θ\theta based on X1,,XnX_{1}, \ldots, X_{n}, corresponding to the quadratic loss function (θa)2(\theta-a)^{2}.

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