Open Access
2022 Local false discovery rate based methods for multiple testing of one-way classified hypotheses
Sanat K. Sarkar, Zhigen Zhao
Author Affiliations +
Electron. J. Statist. 16(2): 6043-6085 (2022). DOI: 10.1214/22-EJS2080

Abstract

This paper continues the line of research initiated in Liu, Sarkar and Zhao (2016) on developing a novel framework for multiple testing of hypotheses grouped in a one-way classified form using hypothesis-specific local false discovery rates (Lfdr’s). It is built on an extension of the standard two-class mixture model from single to multiple groups, defining hypothesis-specific Lfdr as a function of the conditional Lfdr for the hypothesis given that it is within an important group and the Lfdr for the group itself and involving a new parameter that measures grouping effect. This definition captures the underlying group structure for the hypotheses belonging to a group more effectively than the standard two-class mixture model. Two new Lfdr based methods, possessing meaningful optimalities, are produced in their oracle forms. One, designed to control false discoveries across the entire collection of hypotheses, is proposed as a powerful alternative to simply pooling all the hypotheses into a single group and using commonly used Lfdr based method under the standard single-group two-class mixture model. The other is proposed as an Lfdr analog of the method of Benjamini and Bogomolov (2014) for selective inference. It controls Lfdr based measure of false discoveries associated with selecting groups concurrently with controlling the average of within-group false discovery proportions across the selected groups. Simulation studies and real-data application show that our proposed methods are often more powerful than their relevant competitors.

Funding Statement

Sarkar’s research was supported by NSF Grants DMS-1208735, DMS-1309273 and DMS-2210687 (partially). Zhao’s research was supported by NSF Grants DMS-1208735 and IIS-1633283.

Acknowledgments

The authors greatly appreciate valuable comments from the reviewers.

Citation

Download Citation

Sanat K. Sarkar. Zhigen Zhao. "Local false discovery rate based methods for multiple testing of one-way classified hypotheses." Electron. J. Statist. 16 (2) 6043 - 6085, 2022. https://doi.org/10.1214/22-EJS2080

Information

Received: 1 August 2021; Published: 2022
First available in Project Euclid: 22 November 2022

arXiv: 1712.05014
MathSciNet: MR4515712
zbMATH: 07633933
Digital Object Identifier: 10.1214/22-EJS2080

Subjects:
Primary: 60K35 , 60K35
Secondary: 60K35

Keywords: False discovery rate , grouped hypotheses , large-scale multiple testing

Vol.16 • No. 2 • 2022
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