A Heteroscedastic, Rank-Based Approach for Analyzing 2 x 2 Independent Groups Designs
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May 1, 2009
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Laura Mills
York University
Robert A. Cribbie
York University
Wei-Ming Luh
National Cheng Kung University
Abstract
The ANOVA F is a widely used statistic in psychological research despite its shortcomings when the assumptions of normality and variance heterogeneity are violated. A Monte Carlo investigation compared Type I error and power rates of the ANOVA F, Alexander-Govern with trimmed means and Johnson transformation, Welch-James with trimmed means and Johnson Transformation, Welch with trimmed means, and Welch on ranked data using Johansen’s interaction procedure. Results suggest that the ANOVA F is not appropriate when assumptions of normality and variance homogeneity are violated, and that the Welch/Johansen on ranks offers the best balance of empirical Type I error control and statistical power under these conditions.
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