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Bayesian hypothesis testing for psychologists: A tutorial on the Savage-Dickey method

机译:心理学家的贝叶斯假设检验:关于Savage-Dickey方法的教程

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In the field of cognitive psychology, the p-value hypothesis test has established a stranglehold on statistical reporting. This is unfortunate, as the p-value provides at best a rough estimate of the evidence that the data provide for the presence of an experimental effect. An alternative and arguably more appropriate measure of evidence is conveyed by a Bayesian hypothesis test, which prefers the model with the highest average likelihood. One of the main problems with this Bayesian hypothesis test, however, is that it often requires relatively sophisticated numerical methods for its computation. Here we draw attention to the Savage-Dickey density ratio method, a method that can be used to compute the result of a Bayesian hypothesis test for nested models and under certain plausible restrictions on the parameter priors. Practical examples demonstrate the method's validity, generality, and flexibility.
机译:在认知心理学领域,p值假设检验已确立了统计报告的控制权。这很不幸,因为p值充其量只能对数据提供实验效果的证据进行粗略估计。贝叶斯假设检验传达了一种替代的,可能更合适的证据度量,该检验偏爱具有最高平均可能性的模型。但是,这种贝叶斯假设检验的主要问题之一是,它经常需要相对复杂的数值方法来进行计算。在这里,我们提请注意Savage-Dickey密度比方法,该方法可用于计算嵌套模型的贝叶斯假设检验的结果,并且可以在参数先验的某些合理限制下使用。实际示例说明了该方法的有效性,通用性和灵活性。

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