Computing Bayes factors to measure evidence from experiments: An extension of the BIC approximation

Thomas J. Faulkenberry
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引用次数: 30

Abstract

Summary Bayesian inference affords scientists powerful tools for testing hypotheses. One of these tools is the Bayes factor, which indexes the extent to which support for one hypothesis over another is updated after seeing the data. Part of the hesitance to adopt this approach may stem from an unfamiliarity with the computational tools necessary for computing Bayes factors. Previous work has shown that closed-form approximations of Bayes factors are relatively easy to obtain for between-groups methods, such as an analysis of variance or t-test. In this paper, I extend this approximation to develop a formula for the Bayes factor that directly uses information that is typically reported for ANOVAs (e.g., the F ratio and degrees of freedom). After giving two examples of its use, I report the results of simulations which show that even with minimal input, this approximate Bayes factor produces similar results to existing software solutions.
计算贝叶斯因子来测量实验证据:BIC近似的扩展
贝叶斯推理为科学家检验假设提供了强有力的工具。其中一个工具是贝叶斯因子,它在看到数据后对一个假设的支持程度比对另一个假设的支持程度进行索引。采用这种方法的部分犹豫可能源于对计算贝叶斯因子所需的计算工具的不熟悉。先前的研究表明,对于组间方法,如方差分析或t检验,相对容易获得贝叶斯因子的封闭形式近似值。在本文中,我扩展了这个近似值来开发贝叶斯因子的公式,该公式直接使用anova通常报告的信息(例如,F比率和自由度)。在给出其使用的两个例子之后,我报告了模拟的结果,这些结果表明,即使输入最小,这个近似贝叶斯因子也会产生与现有软件解决方案相似的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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