On the efficiency of affine minimax rules in estimating a bounded multivariate normal mean |
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Authors: | Longhai Li |
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Affiliation: | 1. Department of Mathematics and Statistics , University of Saskatchewan , Saskatoon, Saskatchewan, Canada longhai@math.usask.ca |
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Abstract: | Problems involving bounded parameter spaces, for example T-minimax and minimax esyimation of bounded parameters, have received much attention in recent years. The existing literature is rich. In this paper we consider T-minimax estimation of a multivariate bounded normal mean by affine rules, and discuss the loss of efficiency due to the use of such rules instead of optimal, unrestricted rules. We also investigate the behavior of 'probability restricted' affine rules, i.e., rules that have a guaranteed large probability of being in the bounded parameter space of the problem. |
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Keywords: | Bayes estimator Critique of Bayesian inference Decision theory Horwitz–Thompson estimator Wasserman's example |
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