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Randomization Tests

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Abstract

If the model assumptions for ANOVA do not hold, then the ANOVA F-test is not necessarily valid for testing the hypothesis of equal means. However, one can compute an ANOVA table and a F statistic; what is in doubt is whether the “F” ratio has a F distribution.

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Correspondence to Jim Albert .

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Albert, J., Rizzo, M. (2012). Randomization Tests. In: R by Example. Use R!. Springer, New York, NY. https://doi.org/10.1007/978-1-4614-1365-3_10

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