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Summary We propose a competitor to likelihood and significance methods for power transformations to achieve approximate normality in a linear model. The new method is shown in theory and a Monte Carlo experiment to produce more robust inferences than the likelihood method and more powerful (although possibly slightly less robust) inferences than the significance method.
Raymond J. Carroll (Mon,) studied this question.
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