Abstract

Researchers often rely on analysis of variance (ANOVA) when they report results of experiments. To ensure that a study is adequately powered to yield informative results with an ANOVA, researchers can perform an a priori power analysis. However, power analysis for factorial ANOVA designs is often a challenge. Current software solutions do not allow power analyses for complex designs with several within-participants factors. Moreover, power analyses often need [Formula: see text] or Cohen’s f as input, but these effect sizes are not intuitive and do not generalize to different experimental designs. We have created the R package Superpower and online Shiny apps to enable researchers without extensive programming experience to perform simulation-based power analysis for ANOVA designs of up to three within- or between-participants factors. Predicted effects are entered by specifying means, standard deviations, and, for within-participants factors, the correlations. The simulation provides the statistical power for all ANOVA main effects, interactions, and individual comparisons. The software can plot power across a range of sample sizes, can control for multiple comparisons, and can compute power when the homogeneity or sphericity assumption is violated. This Tutorial demonstrates how to perform a priori power analysis to design informative studies for main effects, interactions, and individual comparisons and highlights important factors that determine the statistical power for factorial ANOVA designs.

Highlights

  • When a researcher aims to test hypotheses with an analysis of variance (ANOVA), the sample size of the study should be justified on the basis of the statistical power of the test

  • A unique feature of Superpower is that it allows users to correct for multiple comparisons in exploratory ANOVA designs, and that it automatically provides the statistical power for all main effects, interactions, and simple comparisons for a specified ANOVA design

  • An example of the input in the ANOVA_power Shiny app and the corresponding results are presented in Figures 3 and 4. These results show that when 100,000 simulations are performed for our two-group between-participants design with means of 1 and 0, a standard deviation of 2, and 80 participants in each group, with a seed set to 2019, the statistical power is 88.19% and the average η 2p is

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Summary

Disclosures

The code to reproduce the analyses reported in this article has been made publicly available via OSF and can be accessed at https://osf.io/pn8mc/. An online manual for Superpower can be accessed at https://aaron caldwell.us/SuperpowerBook/. There are shiny apps for the ANOVA_exact Shiny/anova-exact/) and ANOVA_power (https://arcstats .io/shiny/anova-power/) functions mentioned throughout this article. The Superpower R package is available on CRAN (https://CRAN.R-project.org/package=Superpower), and experimental versions of the package are available on our GitHub repository (https://github.com/arcaldwell 49/Superpower)

A Basic Example
Findings
Conclusion

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