Monte Carlo evaluation of the ANOVA's F and Kruskal-Wallis tests under binomial distribution

Authors

  • Eric Batista Ferreira Federal University of Alfenas, Brazil https://orcid.org/0000-0003-3361-0908
  • Marcela C Rocha Lecturer D1-1, Federal Institute of Education, Science and Technology of Southern Minas Gerais, Brazil
  • Diego B Mequelino

Keywords:

Power, Type I error rate, Monte Carlo Simulation, CRD

Abstract

To verify the equality of more than two levels of a factor under interest in experiments conducted under a completely randomized design (CRD) it is common to use the F ANOVA test, which is considered the most powerful test for this purpose. However, the reliability of such results depends on the following assumptions: additivity of effects, independence, homoscedasticity and normality of the errors. The nonparametric Kruskal-Wallis test requires more moderate assumptions and therefore it is an alternative when the assumptions required by the F test are not met. However, the stronger the assumptions of a test, the better its performance. When the fundamental assumptions are met the F test is the best option. In this work, the normality of the errors is violated. Binomial response variables are simulated in order to compare the performances of the F and Kruskal-Wallis tests when one of the analysis of variance assumptions is not satisfied. Through Monte Carlo simulation, were simulated $3,150,000$ experiments to evaluate the type I error rate and power rate of the tests. In most situations, the power of the F test was superior to the Kruskal-Wallis and yet, the F test controlled the Type I error rates.

 

 

Author Biography

Eric Batista Ferreira, Federal University of Alfenas, Brazil

PhD in Statistics and Agricultural Research

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Published

31-12-2012

How to Cite

Ferreira, E. B., Rocha, M. C., & Mequelino, D. B. (2012). Monte Carlo evaluation of the ANOVA’s F and Kruskal-Wallis tests under binomial distribution. Sigmae, 1(1), 126–139. Retrieved from https://publicacoes.unifal-mg.edu.br/revistas/index.php/sigmae/article/view/99