Department of Methodology and Statistics, Utrecht University, P.O. Box 80140, 3508 TC, Utrecht, The Netherlands.
Behav Res Methods. 2019 Feb;51(1):126-137. doi: 10.3758/s13428-018-1149-x.
Researchers often have informative hypotheses in mind when comparing means across treatment groups, such as H : μ < μ < μ and H : μ < μ < μ, and want to compare these hypotheses to each other directly. This can be done by means of Bayesian inference. This article discusses the disadvantages of the frequentist approach to null hypothesis testing and the advantages of the Bayesian approach. It demonstrates how to use the Bayesian approach to hypothesis testing in the setting of cluster-randomized trials. The data from a school-based smoking prevention intervention with four treatment groups are used to illustrate the Bayesian approach. The main advantage of the Bayesian approach is that it provides a degree of evidence from the collected data in favor of an informative hypothesis. Furthermore, a simulation study was conducted to investigate how Bayes factors behave with cluster-randomized trials. The results from the simulation study showed that the Bayes factor increases with increasing number of clusters, cluster size, and effect size, and decreases with increasing intraclass correlation coefficient. The effect of the number of clusters is stronger than the effect of cluster size. With a small number of clusters, the effect of increasing cluster size may be weak, especially when the intraclass correlation coefficient is large. In conclusion, the study showed that the Bayes factor is affected by sample size and intraclass correlation similarly to how these parameters affect statistical power in the frequentist approach of null hypothesis significance testing. Bayesian evaluation may be used as an alternative to null hypotheses testing.
研究人员在比较治疗组之间的均值时,通常会有一些有启发性的假设,例如 H:μ < μ < μ 和 H:μ < μ < μ,并希望直接比较这些假设。这可以通过贝叶斯推断来实现。本文讨论了对零假设检验的频率派方法的缺点和贝叶斯方法的优点。它演示了如何在群组随机试验的背景下使用贝叶斯方法进行假设检验。使用来自具有四个治疗组的基于学校的吸烟预防干预的数据来说明贝叶斯方法。贝叶斯方法的主要优点是,它从收集的数据中提供了对有启发性假设的一定程度的证据。此外,还进行了一项模拟研究,以调查贝叶斯因子在群组随机试验中的行为。模拟研究的结果表明,贝叶斯因子随着群组数量、群组大小和效应大小的增加而增加,随着组内相关系数的增加而减小。群组数量的影响大于群组大小的影响。在群组数量较少的情况下,增加群组大小的效果可能较弱,尤其是当组内相关系数较大时。总之,该研究表明,贝叶斯因子受样本量和组内相关系数的影响与这些参数在零假设显著性检验的频率派方法中对统计功效的影响相似。贝叶斯评估可以作为零假设检验的替代方法。