Jan. 1, 2024, midnight | Zheng Tracy Ke, Jun S. Liu, Yucong Ma

JMLR www.jmlr.org

The knockoff filter is a recent false discovery rate (FDR) control method for high-dimensional linear models. We point out that knockoff has three key components: ranking algorithm, augmented design, and symmetric statistic, and each component admits multiple choices. By considering various combinations of the three components, we obtain a collection of variants of knockoff. All these variants guarantee finite-sample FDR control, and our goal is to compare their power. We assume a Rare and Weak signal model on regression coeffi- …

algorithm components control design discovery false fdr filter impact key linear multiple power ranking rate

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