Kernel Knockoffs Selection for Nonparametric Additive Models

成果类型:
Article
署名作者:
Dai, Xiaowu; Lyu, Xiang; Li, Lexin
署名单位:
University of California System; University of California Berkeley; University of California System; University of California Berkeley; University of California System; University of California Berkeley
刊物名称:
JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
ISSN/ISSBN:
0162-1459
DOI:
10.1080/01621459.2022.2039671
发表日期:
2023
页码:
2158-2170
关键词:
false discovery rate minimax-optimal rates alzheimers-disease variable selection regression inference network atrophy
摘要:
Thanks to its fine balance between model flexibility and interpretability, the nonparametric additive model has been widely used, and variable selection for this type of model has been frequently studied. However, none of the existing solutions can control the false discovery rate (FDR) unless the sample size tends to infinity. The knockoff framework is a recent proposal that can address this issue, but few knockoff solutions are directly applicable to nonparametric models. In this article, we propose a novel kernel knockoffs selection procedure for the nonparametric additive model. We integrate three key components: the knockoffs, the subsampling for stability, and the random feature mapping for nonparametric function approximation. We show that the proposed method is guaranteed to control the FDR for any sample size, and achieves a power that approaches one as the sample size tends to infinity. We demonstrate the efficacy of our method through intensive simulations and comparisons with the alternative solutions. Our proposal thus, makes useful contributions to the methodology of nonparametric variable selection, FDR-based inference, as well as knockoffs. for this article are available online.