Federated feature selection with false discovery rate control
Authors
Paper Information
-
Journal:
Journal of the Royal Statistical Society Series B -
DOI:
10.1093/jrsssb/qkaf074 -
Published:
December 23, 2025 -
Added to Tracker:
Feb 10, 2026
Abstract
Abstract Selecting a set of universally relevant features associated with a given response variable across multiple distributed data sites is an important problem in numerous scientific fields. However, performing this federated feature selection task becomes challenging when individual-level data cannot be shared due to privacy concerns. The problem is further complicated by potential heterogeneity in both feature distributions and model parameters across sites. In this paper, we propose Fed-false discovery rate (FDR), a federated feature selection framework that simultaneously identifies important features while controlling the FDR. To ensure privacy preservation and reduce communication costs, the Fed-FDR shares only lower-dimensional coefficient estimates instead of transmitting summary statistics for all features, with the dimensionality shown to be of the same order as the number of relevant features. The coordinating centre then leverages these lower-dimensional coefficient estimates to construct a generalized mirror statistic to identify the important features. The Fed-FDR is robust to the heterogeneity of feature distribution and model parameters, easy to implement, and computationally efficient. We further demonstrate that Fed-FDR effectively controls the FDR while achieving strong statistical power in our simulation studies. The results of the empirical study also demonstrate that the method is both valid and implementation-ready.
Author Details
Runze Li
AuthorJiayi Tong
AuthorJie Hu
AuthorYang Ning
AuthorYong Chen
AuthorCheng Yong Tang
AuthorJason H Moore
AuthorCitation Information
APA Format
Runze Li
,
Jiayi Tong
,
Jie Hu
,
Yang Ning
,
Yong Chen
,
Cheng Yong Tang
&
Jason H Moore
(2025)
.
Federated feature selection with false discovery rate control.
Journal of the Royal Statistical Society Series B
, 10.1093/jrsssb/qkaf074.
BibTeX Format
@article{paper859,
title = { Federated feature selection with false discovery rate control },
author = {
Runze Li
and Jiayi Tong
and Jie Hu
and Yang Ning
and Yong Chen
and Cheng Yong Tang
and Jason H Moore
},
journal = { Journal of the Royal Statistical Society Series B },
year = { 2025 },
doi = { 10.1093/jrsssb/qkaf074 },
url = { https://doi.org/10.1093/jrsssb/qkaf074 }
}