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Double shrinkage empirical Bayesian estimation for unknown and unequal variances

机译:未知和不等方差的双重收缩经验贝叶斯估计

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In this paper, we construct a point estimator when assuming unequal and unknown variances by using the $empirical$ Bayes approach in the classical normal mean problem. The proposed estimator shrinks both means and variances, and is thus called the double shrinkage estimator. Extensive numerical studies indicate that the double shrinkage estimator has lower Bayes risk than the estimator which shrinks the means alone, and the naive estimator which has no shrinkage at all. We further use a spike-in data set to assess different estimating procedures. It turns out that our proposed estimator performs the best and is thus strongly recommended for applications.
机译:在本文中,我们在经典正态均值问题中使用$ empirical $ Bayes方法构造假设不均等和未知方差的点估计量。提出的估算器同时缩小了均值和方差,因此被称为双重收缩估算器。大量的数值研究表明,双重收缩估计器的Bayes风险低于仅使均值收缩的估计器和完全没有收缩率的朴素估计器。我们将进一步使用尖峰数据集来评估不同的估算程序。事实证明,我们提出的估计器性能最好,因此强烈建议用于应用程序。

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