Estimation of Normal Means: Frequentist Estimation of Loss
Open Access
- 1 June 1989
- journal article
- Published by Institute of Mathematical Statistics in The Annals of Statistics
- Vol. 17 (2) , 890-906
- https://doi.org/10.1214/aos/1176347149
Abstract
In estimation of a $p$-variate normal mean with identity covariance matrix, Stein-type estimators can offer significant gains over the $\operatorname{mle}$ in terms of risk with respect to sum of squares error loss. Their maximum risk is still equal to $p$, however, which will typically be their "reported loss." In this paper we consider use of data-dependent "loss estimators." Two conditions that are attractive for such a loss estimator are that it be an improved loss estimator under some scoring rule and that it have a type of frequentist validity. Loss estimators with these properties are found for several of the most important Stein-type estimators. One such estimator is a generalized Bayes estimator, and the corresponding loss estimator is its posterior expected loss. Thus Bayesians and frequentists can potentially agree on the analysis of this problem.
Keywords
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