Maximum a posteriori estimators as a limit of Bayes estimators

被引:0
|
作者
Robert Bassett
Julio Deride
机构
[1] University of California Davis,Department of Mathematics
来源
Mathematical Programming | 2019年 / 174卷
关键词
62C10; 62F10; 62F15; 65K10;
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摘要
Maximum a posteriori and Bayes estimators are two common methods of point estimation in Bayesian statistics. It is commonly accepted that maximum a posteriori estimators are a limiting case of Bayes estimators with 0–1 loss. In this paper, we provide a counterexample which shows that in general this claim is false. We then correct the claim that by providing a level-set condition for posterior densities such that the result holds. Since both estimators are defined in terms of optimization problems, the tools of variational analysis find a natural application to Bayesian point estimation.
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页码:129 / 144
页数:15
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