Abstract
Multiple testing of a single hypothesis and testing multiple hypotheses are usually done in terms of p-values. In this paper, we replace p-values with their natural competitor, e-values, which are closely related to betting, Bayes factors and likelihood ratios. We demonstrate that e-values are often mathematically more tractable; in particular, in multiple testing of a single hypothesis, e-values can be merged simply by averaging them. This allows us to develop efficient procedures using e-values for testing multiple hypotheses.
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Vovk, V., & Wang, R. (2021). E-values: Calibration, combination and applications. Annals of Statistics, 49(3), 1736–1754. https://doi.org/10.1214/20-AOS2020
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