数学季刊 ›› 2020, Vol. 35 ›› Issue (3): 290-301.doi: 10.13371/j.cnki.chin.q.j.m.2020.03.004

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Elastic Net方法在部分线性模型的应用

  

  1. 1. Guangxi Financial Vocational College2. School of Mathematics and Information Sciences, Guangxi University
  • 收稿日期:2020-04-17 出版日期:2020-09-30 发布日期:2020-10-22
  • 作者简介:HUANG Deng-xiang(1987-), female, native of Nanning, Guangxi, a lecturer of Guangxi Financial Vocational College, engages in application of probability and statistics.
  • 基金资助:

    Supported by National Natural Science Foundation of China (No.71462002); the Project for Teaching Reform of

    Guangxi(GXZZJG2017B084); the Project for Fostering Distinguished Youth Scholars of Guangxi(2020KY50012);

The Application and Property of Elastic Net Procedure for Partially Linear Models

  1. 1. Guangxi Financial Vocational College2. School of Mathematics and Information Sciences, Guangxi University
  • Received:2020-04-17 Online:2020-09-30 Published:2020-10-22
  • About author:HUANG Deng-xiang(1987-), female, native of Nanning, Guangxi, a lecturer of Guangxi Financial Vocational College, engages in application of probability and statistics.
  • Supported by:
    Supported by National Natural Science Foundation of China (No.71462002); the Project for Teaching Reform of Guangxi(GXZZJG2017B084); the Project for Fostering Distinguished Youth Scholars of Guangxi(2020KY50012);

摘要: Variable selection plays an important role in high-dimensional data analysis.But the high-dimensional data often induces the strongly correlated variables problem,which should be properly handled. In this paper, we propose Elastic Net procedure for partially linear models and prove the group effect of its estimate. A simulation study shows that the Elastic Net procedure deals with the strongly correlated variables problem better than the Lasso, ALasso and the Ridge do. Based on the real world data study,we can get that the Elastic Net procedure is particularly useful when the number of predictors p is much bigger than the sample size n.

Abstract: Variable selection plays an important role in high-dimensional data analysis.But the high-dimensional data often induces the strongly correlated variables problem,which should be properly handled. In this paper, we propose Elastic Net procedure for partially linear models and prove the group effect of its estimate. A simulation study shows that the Elastic Net procedure deals with the strongly correlated variables problem better than the Lasso, ALasso and the Ridge do. Based on the real world data study,we can get that the Elastic Net procedure is particularly useful when the number of predictors p is much bigger than the sample size n.

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