Inferences About Regression Interactions Via A Robust Smoother With An Application To Cannabis Problems
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May 1, 2005
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Rand R. Wilcox
Department of Psychology, University of Southern California, Los Angeles
Mitchell Earleywine
Department of Psychology, University of Southern California, Los Angeles
Abstract
A flexible approach to testing the hypothesis of no regression interaction is to test the hypothesis that a generalized additive model provides a good fit to the data, where the components are some type of robust smoother. A practical concern, however, is that there are no published results on how well this approach controls the probability of a Type I error. Simulation results, reported here, indicate that an appropriate choice for the span of the smoother is required so that the actual probability of a Type I error is reasonably close to the nominal level. The technique is illustrated with data dealing with cannabis problems where the usual regression model for interactions provides a poor fit to the data.
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