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Tests of Simple Slopes in Multiple Regression Models with an Interaction: Comparison of Four Approaches
Authors:Yu Liu  Stephen G. West  Roy Levy  Leona S. Aiken
Affiliation:1. Department of Psychological, Health, and Learning Sciences, University of Houston;2. Department of Psychology, Arizona State University;3. T. Denny Sanford School of Social &4. Family Dynamics, Arizona State University
Abstract:In multiple regression researchers often follow up significant tests of the interaction between continuous predictors X and Z with tests of the simple slope of Y on X at different sample-estimated values of the moderator Z (e.g., ±1 SD from the mean of Z). We show analytically that when X and Z are randomly sampled from the population, the variance expression of the simple slope at sample-estimated values of Z differs from the traditional variance expression obtained when the values of X and Z are fixed. A simulation study using randomly sampled predictors compared four approaches: (a) the Aiken and West (1991 Aiken, L. S., &; West, S. G. (1991). Multiple regression: Testing and interpreting interactions. Newbury Park, CA: Sage.[Crossref] [Google Scholar]) test of simple slopes at fixed population values of Z, (b) the Aiken and West test at sample-estimated values of Z, (c) a 95% percentile bootstrap confidence interval approach, and (d) a fully Bayesian approach with diffuse priors. The results showed that approach (b) led to inflated Type 1 error rates and 95% confidence intervals with inadequate coverage rates, whereas other approaches maintained acceptable Type 1 error rates and adequate coverage of confidence intervals. Approach (c) had asymmetric rejection rates at small sample sizes. We used an empirical data set to illustrate these approaches.
Keywords:Bayesian  bootstrap  interaction  multiple regression  simple slope
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