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Restricted most powerful Bayesian tests for linear models

机译:限制最强大的线性模型的贝叶斯测试

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Uniformly most powerful Bayesian tests (UMPBTs) are a new class of Bayesian tests in which null hypotheses are rejected if their Bayes factor exceeds a specified threshold. The alternative hypotheses in UMPBTs are defined to maximize the probability that the null hypothesis is rejected. Here, we generalize the notion of UMPBTs by restricting the class of alternative hypotheses over which this maximization is performed, resulting in restricted most powerful Bayesian tests (RMPBTs). We then derive RMPBTs for linear models by restricting alternative hypotheses to g priors. For linear models, the rejection regions of RMPBTs coincide with those of usual frequentist F-tests, provided that the evidence thresholds for the RMPBTs are appropriately matched to the size of the classical tests. This correspondence supplies default Bayes factors for many common tests of linear hypotheses. We illustrate the use of RMPBTs for ANOVA tests and t-tests and compare their performance in numerical studies.
机译:一致最有效的贝叶斯检验(UMPBT)是一类新的贝叶斯检验,其中,如果空假设的贝叶斯因子超过指定阈值,则将拒绝空假设。定义了UMPBT中的替代假设,以最大程度地拒绝原假设。在这里,我们通过限制进行该最大化的替代假设的类别来概括UMPBT的概念,从而导致受限的最有效的贝叶斯测试(RMPBTs)。然后,通过将替代假设限制为g先验,得出线性模型的RMPBT。对于线性模型,如果RMPBT的证据阈值与经典测试的大小适当匹配,则RMPBT的拒绝区域与通常的频密F检验的拒绝区域一致。这种对应关系为线性假设的许多常见检验提供了默认的贝叶斯因子。我们说明了RMPBT在方差分析和t检验中的使用,并比较了它们在数值研究中的表现。

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