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The frequentist implications of optional stopping on Bayesian hypothesis tests

机译:贝叶斯假设检验中可选中止的频繁意义

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Null hypothesis significance testing (NHST) is the most commonly used statistical methodology in psychology. The probability of achieving a value as extreme or more extreme than the statistic obtained from the data is evaluated, and if it is low enough, the null hypothesis is rejected. However, because common experimental practice often clashes with the assumptions underlying NHST, these calculated probabilities are often incorrect. Most commonly, experimenters use tests that assume that sample sizes are fixed in advance of data collection but then use the data to determine when to stop; in the limit, experimenters can use data monitoring to guarantee that the null hypothesis will be rejected. Bayesian hypothesis testing (BHT) provides a solution to these ills because the stopping rule used is irrelevant to the calculation of a Bayes factor. In addition, there are strong mathematical guarantees on the frequentist properties of BHT that are comforting for researchers concerned that stopping rules could influence the Bayes factors produced. Here, we show that these guaranteed bounds have limited scope and often do not apply in psychological research. Specifically, we quantitatively demonstrate the impact of optional stopping on the resulting Bayes factors in two common situations: (1) when the truth is a combination of the hypotheses, such as in a heterogeneous population, and (2) when a hypothesis is composite-taking multiple parameter values-such as the alternative hypothesis in a t -test. We found that, for these situations, while the Bayesian interpretation remains correct regardless of the stopping rule used, the choice of stopping rule can, in some situations, greatly increase the chance of experimenters finding evidence in the direction they desire. We suggest ways to control these frequentist implications of stopping rules on BHT.
机译:空假设重要性检验(NHST)是心理学中最常用的统计方法。评估获得比从数据中获得的统计数据更高或更高的值的概率,如果该值足够低,则拒绝原假设。但是,由于通常的实验实践经常与NHST的假设冲突,因此这些计算出的概率通常是不正确的。最常见的是,实验人员使用的测试假设在数据收集之前样本量是固定的,然后使用数据确定何时停止。在极限条件下,实验者可以使用数据监视来确保原假设被拒绝。贝叶斯假设检验(BHT)为这些疾病提供了解决方案,因为所使用的停止规则与贝叶斯因子的计算无关。此外,关于BHT频繁性的强大数学保证使研究人员感到欣慰的是,停止规则可能会影响产生的贝叶斯因子。在这里,我们表明这些保证范围的范围有限,并且通常不适用于心理学研究。具体而言,我们在两种常见情况下定量证明了可选终止对由此产生的贝叶斯因子的影响:(1)当真相是假设的组合时,例如在异类总体中;(2)当假设是复合的时,取多个参数值-例如at-test中的替代假设。我们发现,对于这些情况,尽管不管使用哪种停止规则,贝叶斯解释都保持正确,但是在某些情况下,停止规则的选择可以极大地增加实验者在其所需方向上寻找证据的机会。我们建议了一些方法来控制停止BHT规则的这些频繁性含义。

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