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首页> 外文期刊>Journal of Statistical Planning and Inference >Robust empirical Bayes tests for continuous distributions
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Robust empirical Bayes tests for continuous distributions

机译:连续分布的鲁棒经验贝叶斯检验

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摘要

In this paper, we Study the empirical Bayes two-action problem under linear loss function. Upper bounds on the regret of empirical Bayes testing rules are investigated. Previous results on this problem construct empirical Bayes tests using kernel type estimators of nonparametric functionals. Further, they have assumed specific forms. such as the continuous one-parameter exponential family for {F-theta : theta is an element of Omega}, for the family of distributions of the observations. In this paper, we present a new general approach of establishing upper bounds (in terms of rate of convergence) of empirical Bayes tests for this problem. Our results are given for any family of continuous distributions and apply to empirical Bayes tests based on any type of nonparametric method of functional estimation. We show that our bounds are very sharp in the sense that they reduce to existing optimal or nearly optimal rates of convergence when applied to specific families of distributions.
机译:本文研究线性损失函数下的经验贝叶斯二作用问题。研究了经验贝叶斯检验规则后悔的上限。关于此问题的先前结果使用非参数函数的核类型估计器构造了经验贝叶斯测试。此外,他们采取了特定的形式。例如{F-theta:theta是Omega的一个元素}的连续一参数指数族,用于观测分布的族。在本文中,我们提出了建立经验贝叶斯检验上限(就收敛速度而言)的新通用方法。我们的结果适用于任何连续分布族,并适用于基于任何类型的函数估计非参数方法的经验贝叶斯检验。我们表明,在将边界应用于特定分布族时,它们会减小到现有的最优或接近最优收敛速度,从这个意义上说,我们的边界非常清晰。

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