Variability of Bayes Factor estimates in Bayesian Analysis of Variance

IF 1.3
R. Pfister
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引用次数: 7

Abstract

Bayes Factor estimation for Bayesian Analysis of Variance (ANOVA) typically relies on iterative algorithms that, by design, yield slightly different results on every run of the analysis. The variability of these estimates is surprisingly large, however: The present simulations indicate that repeating one and the same Bayesian ANOVA on a constant dataset often results in Bayes Factors that differ by a factor of 2 or more within only a few runs when using common analysis procedures. Results may at times even suggest evidence for the null hypothesis of no effect on one run while supporting the alternative hypothesis on another run. These observations call for a cautious approach to the results of Bayesian ANOVAs at present, and I outline three possibilities to circumvent or minimize this limitation.
贝叶斯方差分析中贝叶斯因子估计的可变性
贝叶斯方差分析(ANOVA)的因子估计通常依赖于迭代算法,根据设计,每次分析都会产生略有不同的结果。然而,这些估计的可变性惊人地大:目前的模拟表明,在一个恒定的数据集上重复一个和相同的贝叶斯方差分析通常会导致贝叶斯因子在使用普通分析程序时仅在几次运行中就相差2个或更多。结果有时甚至可能为一次跑步没有影响的零假设提供证据,而在另一次跑步中支持替代假设。目前,这些观察结果要求对贝叶斯方差分析的结果采取谨慎的态度,我概述了规避或最小化这一限制的三种可能性。
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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