Ultra-high dimensional variable screening via Gram–Schmidt orthogonalization

被引:1
|
作者
Huiwen Wang
Ruiping Liu
Shanshan Wang
Zhichao Wang
Gilbert Saporta
机构
[1] Beihang University,School of Economics and Management
[2] Beijing Advanced Innovation Center for Big Data and Brain Computing,Cedric
[3] Beijing Key Laboratory of Emergence Support Simulation Technologies for City Operations,undefined
[4] Conservatoire National des Arts et Métiers,undefined
来源
Computational Statistics | 2020年 / 35卷
关键词
Variable selection; High correlation; High dimensionality; Screening procedure;
D O I
暂无
中图分类号
学科分类号
摘要
Independence screening procedure plays a vital role in variable selection when the number of variables is massive. However, high dimensionality of the data may bring in many challenges, such as multicollinearity or high correlation (possibly spurious) between the covariates, which results in marginal correlation being unreliable as a measure of association between the covariates and the response. We propose a novel and simple screening procedure called Gram–Schmidt screening (GSS) by integrating the classical Gram–Schmidt orthogonalization and the sure independence screening technique, which takes into account high correlations between the covariates in a data-driven way. GSS could successfully discriminate between the relevant and the irrelevant variables to achieve a high true positive rate without including many irrelevant and redundant variables, which offers a new perspective for screening method when the covariates are highly correlated. The practical performance of GSS was shown by comparative simulation studies and analysis of two real datasets.
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页码:1153 / 1170
页数:17
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