A randomization-based perspective on analysis of variance: A test statistic robust to treatment effect heterogeneity

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Abstract

Fisher randomization tests for Neyman's null hypothesis of no average treatment effect are considered in a finite-population setting associated with completely randomized experiments involving more than two treatments. The consequences of using the F statistic to conduct such a test are examined, and we argue that under treatment effect heterogeneity, use of the F statistic in the Fisher randomization test can severely inflate the Type I error under Neyman's null hypothesis. We propose to use an alternative test statistic, derive its asymptotic distributions under Fisher's and Neyman's null hypotheses, and demonstrate its advantages through simulations.

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Ding, P., & Dasgupta, T. (2018). A randomization-based perspective on analysis of variance: A test statistic robust to treatment effect heterogeneity. Biometrika, 105(1), 45–56. https://doi.org/10.1093/biomet/asx059

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