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Inherent difficulties of non-Bayesian likelihood-based inference, as revealed by an examination of a recent book by Aitkin

机译:非贝叶斯似然推理的内在困难,正如艾特金(Aitkin)对最近一本书的研究所揭示的那样

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摘要

For many decades, statisticians have made attempts to prepare the Bayesian omelette without breaking the Bayesian eggs; that is, to obtain probabilistic likelihood-based inferences without relying on informative prior distributions. A recent example is Murray Aitkin's recent book, Statistical Inference, which presents an approach to statistical hypothesis testing based on comparisons of posterior distributions of likelihoods under competing models. Aitkin develops and illustrates his method using some simple examples of inference from iid data and two-way tests of independence. We analyze in this note some consequences of the inferential paradigm adopted therein, discussing why the approach is incompatible with a Bayesian perspective and why we do not find it relevant for applied work.
机译:几十年来,统计学家一直在尝试准备贝叶斯煎蛋而不破坏贝叶斯蛋。也就是说,在不依赖于先验分布的情况下获得基于概率的似然推断。最近的一个例子是默里·艾特金(Murray Aitkin)的最新著作《统计推断》(Statistical Inference),该书提出了一种基于竞争模型下可能性的后验分布比较的统计假设检验方法。 Aitkin使用来自iid数据的推论和双向独立性测试的一些简单示例来开发和说明他的方法。我们在本文中分析了其中采用推论范式的一些后果,讨论了为什么该方法与贝叶斯观点不兼容以及为什么我们认为它与应用工作无关。

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