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Sample Size Determination for Bayesian Hierarchical Models Commonly Used in Psycholinguistics

机译:心理语言学中常用的贝叶斯分层模型的样本量确定

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Abstract We discuss an important issue that is not directly related to the main theses of the van Doorn et al. (Computational Brain and Behavior, 2021) paper, but which frequently comes up when using Bayesian linear mixed models: how to determine sample size in advance of running a study when planning a Bayes factor analysis. We adapt a simulation-based method proposed by Wang and Gelfand (Statistical Science 193–208, 2002) for a Bayes factor-based design analysis, and demonstrate how relatively complex hierarchical models can be used to determine approximate sample sizes for planning experiments.
机译:摘要讨论这并不是一个重要问题的主要论文直接相关多尔恩et al。(计算大脑和行为,2021),但经常出现的时候使用贝叶斯线性混合模型:如何确定样本容量的运行当计划一个贝叶斯因子分析研究。适应王提出的基于仿真的方法统计科学和盖尔芬德(193 - 208,2002)贝叶斯的因素设计分析,演示如何相对复杂的分层模型可以用来确定近似样本大小规划实验。

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