Feature screening for ultrahigh-dimensional survival data when failure indicators are missing at random

被引:0
|
作者
Jianglin Fang
机构
[1] Hunan Institute of Engineering,College of Science
来源
Statistical Papers | 2021年 / 62卷
关键词
Ultrahigh-dimensional data; Censored data; Missing data; Feature screening; Active variable set;
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中图分类号
学科分类号
摘要
In modern statistical applications, the dimension of covariates can be much larger than the sample size, and extensive research has been done on screening methods which can effectively reduce the dimensionality. However, the existing feature screening procedure can not be used to handle the ultrahigh-dimensional survival data problems when failure indicators are missing at random. This motivates us to develop a feature screening procedure to handle this case. In this paper, we propose a feature screening procedure by sieved nonparametric maximum likelihood technique for ultrahigh-dimensional survival data with failure indicators missing at random. The proposed method has several desirable advantages. First, it does not rely on any model assumption and works well for nonlinear survival regression models. Second, it can be used to handle the incomplete survival data with failure indicators missing at random. Third, the proposed method is invariant under the monotone transformation of the response and satisfies the sure screening property. Simulation studies are conducted to examine the performance of our approach, and a real data example is also presented for illustration.
引用
收藏
页码:1141 / 1166
页数:25
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