| Literature DB >> 30306409 |
Abstract
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, 1996) and Judd, Kenny, and McClelland (Psychological Methods 6; 115-134, 2001) 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. (1996) 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 http://akmontoya.com ), 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.Entities:
Keywords: Interaction; Johnson-Neyman; Linear regression; Moderation; Probing; Repeated measures
Mesh:
Year: 2019 PMID: 30306409 PMCID: PMC6420436 DOI: 10.3758/s13428-018-1088-6
Source DB: PubMed Journal: Behav Res Methods ISSN: 1554-351X
Fig. 1MEMORE SPSS output for simple moderator model generated from theMEMORE command line used for estimation. Output explores a model that allows the effect of treatment on pain ( vs. ) to be moderated by baseline inflammation ()
Fig. 2Graph of the conditional effect of treatment (C) on pain (Y) as a linear function of inflammation (W) including the Johnson–Neyman transition point (JN). The JN point is where the confidence interval around the condition effect intersects zero on the y-axis
Comparison of three types of moderation models for two-instance repeated measures designs
Fig. 3MEMORE SPSS output for an additive moderator model generated from the command line in the text. The output explores a model that allows the effect of treatment on pain (PrePain v+s. PostPain) to be moderated by type of treatment (therapy) and baseline inflammation (inflame)
Fig. 4Path diagram representing structural equation model for testing moderation in a two-instance repeated measures design