Inferences About the Components of a Generalized Additive Model
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Nov 1, 2006
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Rand R. Wilcox
Department of Psychology, University of Southern California
Abstract
A method for making inferences about the components of a generalized additive model is described. It is found that a variation of the method, based on means, performs well in simulations. Unlike many other inferential methods, switching from a mean to a 20% trimmed mean was found to offer little or no advantage in terms of both power and controlling the probability of a Type I error.
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