Estimating the mean of a normal distribution with loss equal to squared error plus complexity cost (Q1094016)

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scientific article; zbMATH DE number 4024492
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Estimating the mean of a normal distribution with loss equal to squared error plus complexity cost
scientific article; zbMATH DE number 4024492

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    Estimating the mean of a normal distribution with loss equal to squared error plus complexity cost (English)
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    1987
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    Estimating the mean of a p-variate normal distribution is considered when the loss is squared error plus a complexity cost. The complexity of estimates is defined using a partition of the parameter space into sets corresponding to models of different complexity. The model implied by the use of an estimate determines the estimate's complexity cost. Complete classes of estimators are developed which consist of preliminary-test estimators. As is the case when loss is just squared error, the maximum-likelihood estimator is minimax. However, unlike the no-complexity-cost case, the maximum-likelihood estimator is inadmissible even in the case when \(p=1\) or 2.
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    squared-error loss
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    generalized Bayes
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    mean
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    p-variate normal distribution
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    complexity of estimates
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    complexity cost
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    preliminary-test estimators
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    maximum-likelihood estimator
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