Stein问题中极小值的积分不等式

T. Kubokawa
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引用次数: 4

摘要

在多元正态均值的估计中,证明了在极大似然估计的基础上推导收缩估计的问题可以简化为求解一个积分不等式的问题。积分不等式不仅提供了比传统的微分不等式更一般的条件,而且还处理了不可微估计或不连续估计。本文还给出了先验分布的一般条件,使得得到的广义贝叶斯估计量是极小极大的。最后,基于风险的积分表达式,给出了构造一类改进的James-Stein估计量的简单证明。
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Integral Inequality for Minimaxity in the Stein Problem
In the estimation of a multivariate normal mean, it is shown that the problem of deriving shrinkage estimators improving on the maximum likelihood estimator can be reduced to that of solving an integral inequality. The integral inequality not only provides a more general condition than a conventional differential inequality studied in the literature, but also handles non-differentiable or discontinuous estimators. The paper also gives general conditions on prior distributions such that the resulting generalized Bayes estimators are minimax. Finally, a simple proof for constructing a class of estimators improving on the James-Stein estimator is given based on the integral expression of the risk.
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