English

Asymptotic and compound e-values: multiple testing and empirical Bayes

Methodology 2025-07-24 v4

Abstract

We explicitly define the notions of (bona fide, approximate or asymptotic) compound p-values and e-values, which have been implicitly presented and used in the recent multiple testing literature. While it is known that the e-BH procedure with compound e-values controls the FDR, we show the converse: every FDR controlling procedure can be recovered by instantiating the e-BH procedure with certain compound e-values. Since compound e-values are closed under averaging, this allows for combination and derandomization of arbitrary FDR procedures. We then connect compound e-values to empirical Bayes. In particular, we use the fundamental theorem of compound decision theory to derive the log-optimal simple separable compound e-value for testing a set of point nulls against point alternatives: it is a ratio of mixture likelihoods. As one example, we construct asymptotic compound e-values for multiple t-tests, where the (nuisance) variances may be different across hypotheses. Our construction may be interpreted as a data-driven instantiation of the optimal discovery procedure, and our results provide the first type-I error guarantees for the same, along with significant power gains.

Keywords

Cite

@article{arxiv.2409.19812,
  title  = {Asymptotic and compound e-values: multiple testing and empirical Bayes},
  author = {Nikolaos Ignatiadis and Ruodu Wang and Aaditya Ramdas},
  journal= {arXiv preprint arXiv:2409.19812},
  year   = {2025}
}
R2 v1 2026-06-28T19:01:25.764Z