Gaussian Rank Verification
Methodology
2025-07-15 v3
Abstract
Statistical experiments often seek to identify random variables with the largest population means. This inferential task, known as rank verification, has been well-studied on Gaussian data with equal variances. This work provides the first treatment of the unequal variances case, utilizing ideas from the selective inference literature. We design a hypothesis test that verifies the rank of the largest observed value without losing power due to multiple testing corrections. This test is subsequently extended for two procedures: Identifying some number of correctly-ordered Gaussian means, and validating the top-K set. The testing procedures are validated on NHANES survey data.
Cite
@article{arxiv.2501.14142,
title = {Gaussian Rank Verification},
author = {Jeremy Goldwasser and Will Fithian and Giles Hooker},
journal= {arXiv preprint arXiv:2501.14142},
year = {2025}
}
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Published in Stat