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Statistica Sinica 35 (2025), 2033-2055

SUFFICIENT VARIABLE SCREENING FOR
ULTRAHIGH-DIMENSIONAL RIGHT CENSORED DATA
VIA INDEPENDENCE MEASURES

Baoying Yang*1, Qingcong Yuan2,3 and Xiangrong Yin4

1Southwest Jiaotong University, 2Miami University,
3Sanofi US and 4University of Kentucky

Abstract: We develop two sufficient variable screening procedures utilizing the newly proposed censored distance correlation measures for ultrahigh-dimensional right censored data. Compared to many existing methods, our procedures more effectively detect active predictors that are marginally independent of the response. They are also model-free and robust against model misspecification. Through simulations and real data analysis, we demonstrate the distinct advantages of our proposed procedures over existing variable screening methods.

Keywords words and phrases: Distance correlation, feature screening, independence measure.

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