Minimax Estimation of Linear Combinations of Restricted Location Parameters

T. Kubokawa
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引用次数: 5

Abstract

The estimation of a linear combination of several restricted location parameters is addressed from a decision-theoretic point of view. A bench-mark estimator of the linear combination is an unbiased estimator, which is minimax, but inadmissible relative to the mean squared error. An interesting issue is what is a prior distribution which results in the generalized Bayes and minimax estimator. Although it seems plausible that the generalized Bayes estimator against the uniform prior over the restricted space should be minimax, it is shown to be not minimax when the number of the location parameters, k, is more than or equal to three, while it is minimax for k = 1. In the case of k = 2, a necessary and sufficient condition for the minimaxity is given, namely, the minimaxity depends on signs of coefficients of the linear combination. When the underlying distributions are normal, we can obtain a prior distribution which results in the generalized Bayes estimator satisfying minimaxity and admissibility. Finally, it is demonstrated that the estimation of ratio of normal variances converges to the estimation of difference of the normal positive means, which gives a motivation of the issue studied here.
受限位置参数线性组合的极大极小估计
从决策理论的角度出发,研究了若干受限位置参数线性组合的估计问题。线性组合的基准估计量是一个无偏估计量,它是极小极大的,但相对于均方误差是不允许的。一个有趣的问题是产生广义贝叶斯和极大极小估计量的先验分布是什么。虽然在有限空间上,针对均匀先验的广义贝叶斯估计量似乎是似是而非的,但当位置参数k的数量大于或等于3时,它不是极小极大的,而当k = 1时,它是极小极大的。在k = 2的情况下,给出了最小值的充分必要条件,即最小值依赖于线性组合的系数符号。当底层分布是正态分布时,我们可以得到一个先验分布,使得广义贝叶斯估计量满足极小性和容许性。最后,证明了正态方差之比的估计收敛于正态正均值之差的估计,从而给出了本文研究问题的动机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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