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Moderation analysis in two-instance repeated measures designs: Probing methods and multiple moderator models

机译:二实例重复测量设计中的中度分析:探测方法和多个主持人模型

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摘要

Moderation hypotheses appear in every area of psychological science, but the methods for testing and probing moderation in two-instance repeated measures designs are incomplete. This article begins with a short overview of testing and probing interactions in between-participant designs. Next I review the methods outlined in Judd, McClelland, and Smith (Psychological Methods 1; 366–378, ) and Judd, Kenny, and McClelland (Psychological Methods 6; 115–134, ) for estimating and conducting inference on an interaction between a repeated measures factor and a single between-participant moderator using linear regression. I extend these methods in two ways: First, the article shows how to probe interactions in a two-instance repeated measures design using both the pick-a-point approach and the Johnson–Neyman procedure. Second, I extend the models described by Judd et al. () to multiple-moderator models, including additive and multiplicative moderation. Worked examples with a published dataset are included, to demonstrate the methods described throughout the article. Additionally, I demonstrate how to use Mplus and MEMORE (Mediation and Moderation for Repeated Measures; available at ), an easy-to-use tool available for SPSS and SAS, to estimate and probe interactions when the focal predictor is a within-participant factor, reducing the computational burden for researchers. I describe some alternative methods of analysis, including structural equation models and multilevel models. The conclusion touches on some extensions of the methods described in the article and potentially fruitful areas of further research.
机译:缓和假设出现在心理学的每个领域,但是在两次实例重复测量设计中测试和探究缓和的方法并不完善。本文首先简要介绍了参与者之间设计中的测试和探测交互。接下来,我回顾Judd,McClelland和Smith(Psychological Methods 1; 366-378,)和Judd,Kenny and McClelland(Psychological Methods 6; 115-134,)中概述的方法,这些方法用于估计和进行推理之间的相互作用。重复测量因子和一个使用线性回归的参与者间主持人。我以两种方式扩展了这些方法:首先,本文介绍了如何使用“选择点”方法和Johnson-Neyman过程在双实例重复测量设计中探究相互作用。其次,我扩展了Judd等人描述的模型。 ()转换为多重主持人模型,包括加性和乘性调节。包含已发布数据集的工作示例,以演示本文中描述的方法。此外,我演示了如何使用Mplus和MEMORE(重复测量的中介和调节;可在处获得)(一种适用于SPSS和SAS的易于使用的工具),当焦点预测变量是参与因素时,可以估算和探测相互作用。 ,减轻了研究人员的计算负担。我描述了一些替代分析方法,包括结构方程模型和多级模型。结论涉及本文所述方法的一些扩展以及可能进行进一步研究的富有成果的领域。

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