频数推理
心理学
贝叶斯因子
无效假设
统计假设检验
统计
随机效应模型
计量经济学
贝叶斯概率
假阳性悖论
频发概率
贝叶斯定理
人口
贝叶斯推理
数学
荟萃分析
人口学
医学
社会学
内科学
标识
DOI:10.1177/09567976211046884
摘要
Mixed models are gaining popularity in psychology. For frequentist mixed models, previous research showed that excluding random slopes-differences between individuals in the direction and size of an effect-from a model when they are in the data can lead to a substantial increase in false-positive conclusions in null-hypothesis tests. Here, I demonstrated through five simulations that the same is true for Bayesian hypothesis testing with mixed models, which often yield Bayes factors reflecting very strong evidence for a mean effect on the population level even if there was no such effect. Including random slopes in the model largely eliminates the risk of strong false positives but reduces the chance of obtaining strong evidence for true effects. I recommend starting analysis by testing the support for random slopes in the data and removing them from the models only if there is clear evidence against them.
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