贝叶斯因子
贝叶斯定理
统计
统计假设检验
I类和II类错误
样本量测定
无效假设
序贯分析
计量经济学
先验与后验
贝叶斯概率
直觉
频数推理
推论
Bayes错误率
统计能力
贝叶斯法则
替代假设
计算机科学
贝叶斯推理
心理学
数学
人工智能
贝叶斯分类器
哲学
认识论
认知科学
作者
Felix D. Schönbrodt,Eric‐Jan Wagenmakers,Michael Zehetleitner,Marco Perugini
出处
期刊:Psychological Methods
[American Psychological Association]
日期:2015-12-14
卷期号:22 (2): 322-339
被引量:553
摘要
Unplanned optional stopping rules have been criticized for inflating Type I error rates under the null hypothesis significance testing (NHST) paradigm. Despite these criticisms, this research practice is not uncommon, probably because it appeals to researcher's intuition to collect more data to push an indecisive result into a decisive region. In this contribution, we investigate the properties of a procedure for Bayesian hypothesis testing that allows optional stopping with unlimited multiple testing, even after each participant. In this procedure, which we call Sequential Bayes Factors (SBFs), Bayes factors are computed until an a priori defined level of evidence is reached. This allows flexible sampling plans and is not dependent upon correct effect size guesses in an a priori power analysis. We investigated the long-term rate of misleading evidence, the average expected sample sizes, and the biasedness of effect size estimates when an SBF design is applied to a test of mean differences between 2 groups. Compared with optimal NHST, the SBF design typically needs 50% to 70% smaller samples to reach a conclusion about the presence of an effect, while having the same or lower long-term rate of wrong inference. (PsycINFO Database Record
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