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Bayes and empirical-Bayes multiplicity adjustment in the variable-selection problem

机译:变量选择问题中的贝叶斯和经验贝叶斯多重性调整

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摘要

This paper studies the multiplicity-correction effect of standard Bayesian variable-selection priors in linear regression. Our first goal is to clarify when, and how, multiplicity correction happens automatically in Bayesian analysis, and to distinguish this correction from the Bayesian Ockham's-razor effect. Our second goal is to contrast empirical-Bayes and fully Bayesian approaches to variable selection through examples, theoretical results and simulations. Considerable differences between the two approaches are found. In particular, we prove a theorem that characterizes a surprising aymptotic discrepancy between fully Bayes and empirical Bayes. This discrepancy arises from a different source than the failure to account for hyperparameter uncertainty in the empirical-Bayes estimate. Indeed, even at the extreme, when the empirical-Bayes estimate converges asymptotically to the true variable-inclusion probability, the potential for a serious difference remains.
机译:本文研究了标准贝叶斯变量选择先验在线性回归中的多重校正作用。我们的首要目标是澄清在贝叶斯分析中何时以及如何自动进行多重校正,并将这种校正与贝叶斯Ockham剃刀效应区分开。我们的第二个目标是通过示例,理论结果和模拟来对比经验贝叶斯方法和完全贝叶斯方法进行变量选择。发现两种方法之间存在很大差异。特别是,我们证明了一个定理,该定理描述了完全贝叶斯和经验贝叶斯之间令人惊讶的渐近差异。这种差异的产生原因与经验贝叶斯估计中无法解释超参数不确定性的来源不同。确实,即使在极端情况下,当经验贝叶斯估计渐近收敛到真实的变量包含概率时,仍然存在严重差异的可能性。

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