具有高度相关变量的广义线性模型的变量选择

IF 0.8 3区 数学 Q2 MATHEMATICS Acta Mathematica Sinica-English Series Pub Date : 2024-04-15 DOI:10.1007/s10114-024-2198-y
Li Li Yue, Wei Tao Wang, Gao Rong Li
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引用次数: 0

摘要

惩罚性变量选择方法通常用于选择相关协变量并同时估计未知回归系数,但这些现有方法对于高度相关的协变量可能不一致。本文提出了带有 Lasso 惩罚的半标准偏协方差(SPAC)方法来研究具有高度相关协变量的广义线性模型,并在一些正则性条件下证明了高维环境下估计和变量选择的一致性。通过一些模拟研究和对结肠肿瘤数据集的分析表明,与传统的惩罚变量选择方法相比,所提出的方法在解决高相关性问题时表现更好。
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Variable Selection for Generalized Linear Model with Highly Correlated Covariates

The penalized variable selection methods are often used to select the relevant covariates and estimate the unknown regression coefficients simultaneously, but these existing methods may fail to be consistent for the setting with highly correlated covariates. In this paper, the semi-standard partial covariance (SPAC) method with Lasso penalty is proposed to study the generalized linear model with highly correlated covariates, and the consistencies of the estimation and variable selection are shown in high-dimensional settings under some regularity conditions. Some simulation studies and an analysis of colon tumor dataset are carried out to show that the proposed method performs better in addressing highly correlated problem than the traditional penalized variable selection methods.

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来源期刊
CiteScore
1.00
自引率
0.00%
发文量
138
审稿时长
14.5 months
期刊介绍: Acta Mathematica Sinica, established by the Chinese Mathematical Society in 1936, is the first and the best mathematical journal in China. In 1985, Acta Mathematica Sinica is divided into English Series and Chinese Series. The English Series is a monthly journal, publishing significant research papers from all branches of pure and applied mathematics. It provides authoritative reviews of current developments in mathematical research. Contributions are invited from researchers from all over the world.
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