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Experiments with More Than One Random Factor: Designs, Analytic Models, and Statistical Power
Annual Review of Psychology ( IF 24.8 ) Pub Date : 2017-01-04 00:00:00 , DOI: 10.1146/annurev-psych-122414-033702
Charles M. Judd 1 , Jacob Westfall 2 , David A. Kenny 3
Affiliation  

Traditional methods of analyzing data from psychological experiments are based on the assumption that there is a single random factor (normally participants) to which generalization is sought. However, many studies involve at least two random factors (e.g., participants and the targets to which they respond, such as words, pictures, or individuals). The application of traditional analytic methods to the data from such studies can result in serious bias in testing experimental effects. In this review, we develop a comprehensive typology of designs involving two random factors, which may be either crossed or nested, and one fixed factor, condition. We present appropriate linear mixed models for all designs and develop effect size measures. We provide the tools for power estimation for all designs. We then discuss issues of design choice, highlighting power and feasibility considerations. Our goal is to encourage appropriate analytic methods that produce replicable results for studies involving new samples of both participants and targets.

中文翻译:


具有多个随机因素的实验:设计,分析模型和统计功效

从心理学实验中分析数据的传统方法是基于这样一个假设,即有一个随机因素(通常是参与者)需要对其进行归纳。但是,许多研究涉及至少两个随机因素(例如,参与者及其反应的对象,例如单词,图片或个人)。将传统的分析方法应用于此类研究的数据可能会严重影响测试实验效果。在这篇评论中,我们开发了一种涉及两种随机因素(可能是交叉的也可能是嵌套的)和一个固定因素(条件)的设计的综合类型学。我们为所有设计提供适当的线性混合模型,并开发效果尺寸度量。我们提供用于所有设计的功率估算工具。然后,我们讨论设计选择的问题,强调功率和可行性考虑因素。我们的目标是鼓励采用适当的分析方法,使涉及参与者和目标的新样本的研究产生可复制的结果。

更新日期:2017-01-04
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