Some small-sample results on a bounded influence rank regression method |
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Authors: | Rand R. Wilcox |
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Affiliation: | Dept of Psychology , University of Southern California |
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Abstract: | Naranjo and HeUmansperger (1994) recently derved a bounded influence rank regression method and suggested how hypotheses about the regression coefficients might be tested. This brief note reports some simulation results on how their procedure performs when there is one predictor. Even when the error term is highly skewed, good control over the Type I error probability is obtained Power can be high relative to least squares regression when the error term has a heavy tailed distribution .and the predictor has a symmetric distribution However, if the predictor has a skewed distribution, power can be relatively low even when the distribution of the error term is heavy tailed. Despite this, it is argued that their method provides an important and useful alternative to ordinary least squares as well as other robust regression methods. |
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Keywords: | robust hypothesis testing outhers nonparametric methods |
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