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Statistica Sinica 36 (2026), 279-303

VARIABLE SCREENING VIA CONDITIONAL
MARTINGALE DIFFERENCE DIVERGENCE

Lei Fang*1, Qingcong Yuan2, Xiangrong Yin3 and Chenglong Ye3

1Miami University, 2Sanofi and 3University of Kentucky

Abstract: Variable screening has been a useful research area that deals with ultrahigh-dimensional data. When there exist both marginally and jointly dependent predictors to the response, existing methods such as conditional screening or iterative screening often suffer from instability against the selection of the conditional set or the computational burden, respectively. In this article, we propose a new independence measure, named conditional martingale difference divergence (CMDH), that can be treated as either a conditional or a marginal independence measure. Under regularity conditions, we show that the sure screening property of CMDH holds for both marginally and jointly active variables. Based on this measure, we propose a kernel-based model-free variable screening method, which is efficient, flexible, and stable against high correlation among predictors and heterogeneity of the response. In addition, we provide a data-driven method to select the conditional set. In simulations and real data applications, we demonstrate the superior performance of the proposed method.

Key words and phrases: Conditional screening, dimension reduction, independence measure, reproducing kernel Hilbert space, sure screening property.


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