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Bayes factor design analysis: Planning for compelling evidence

机译:贝叶斯因子设计分析:规划令人信服的证据

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摘要

A sizeable literature exists on the use of frequentist power analysis in the null-hypothesis significance testing (NHST) paradigm to facilitate the design of informative experiments. In contrast, there is almost no literature that discusses the design of experiments when Bayes factors (BFs) are used as a measure of evidence. Here we explore Bayes Factor Design Analysis (BFDA) as a useful tool to design studies for maximum efficiency and informativeness. We elaborate on three possible BF designs, (a) a fixed-n design, (b) an open-ended Sequential Bayes Factor (SBF) design, where researchers can test after each participant and can stop data collection whenever there is strong evidence for either or , and (c) a modified SBF design that defines a maximal sample size where data collection is stopped regardless of the current state of evidence. We demonstrate how the properties of each design (i.e., expected strength of evidence, expected sample size, expected probability of misleading evidence, expected probability of weak evidence) can be evaluated using Monte Carlo simulations and equip researchers with the necessary information to compute their own Bayesian design analyses.
机译:在零假假设意义测试(NHST)范式中使用频率频率分析的使用,有一种相当大的文献,便于设计信息实验。相比之下,几乎没有文献,讨论了当贝叶斯因子(BFS)用作证据的衡量标准时实验的设计。在这里,我们探索贝叶斯因子设计分析(BFDA)作为设计最高效率和信息性研究的有用工具。我们在三种可能的BF设计中详细说明(a)一个固定的n设计,(b)开放式顺序贝叶斯因子(SBF)设计,其中研究人员可以在每个参与者之后进行测试,并且只要有强有力的证据即可停止数据收集或者和(c)修改的SBF设计,其定义了最大样本大小,无论当前证据状态如何,都停止了数据收集。我们展示了每种设计的性质(即,据预期的证据强度,预期的样本量,误导性证据的预期概率,弱证据的预期概率)可以使用Monte Carlo Simulations进行评估,并配备有必要的信息来计算自己的信息贝叶斯设计分析。

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