Ultra-high Dimensional Variable Screening via Density Weighted Variance

Jingke Zhou, Yingzhen Chen
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Abstract

Density Weighted Variance (DWV), a novel model-free feature screening criterion is proposed for mean regression with ultrahigh-dimensional covariates. Compared with existing model free screening criteria, DWV criterion possesses faster convergence rate for inactive co-varieties and is as same convergence rate as most existing variable screening procedures for active covariates. Furthermore, DWV criterion is extended to quintile regression and multiple response regression setting. Finally, numerical simulations and a real data analysis are conducted to show the finite sample performance of the proposed methods.
密度加权方差超高维变量筛选
针对超高维协变量均值回归,提出了一种新的无模型特征筛选准则——密度加权方差(DWV)。与现有的无模型筛选准则相比,DWV准则对非活性协变量的收敛速度更快,对活性协变量的收敛速度与大多数现有的变量筛选程序相同。进一步将DWV准则扩展到五分位数回归和多响应回归设置。最后,通过数值模拟和实际数据分析,验证了所提方法的有限样本性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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