Broken Adaptive Ridge Method for Variable Selection in Generalized Partly Linear Models with Application to the Coronary Artery Disease Data

Christian Chan, Xiaotian Dai, Thierry Chekouo, Quan Long, Xuewen Lu
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Abstract

Motivated by the CATHGEN data, we develop a new statistical learning method for simultaneous variable selection and parameter estimation under the context of generalized partly linear models for data with high-dimensional covariates. The method is referred to as the broken adaptive ridge (BAR) estimator, which is an approximation of the $L_0$-penalized regression by iteratively performing reweighted squared $L_2$-penalized regression. The generalized partly linear model extends the generalized linear model by including a non-parametric component to construct a flexible model for modeling various types of covariate effects. We employ the Bernstein polynomials as the sieve space to approximate the non-parametric functions so that our method can be implemented easily using the existing R packages. Extensive simulation studies suggest that the proposed method performs better than other commonly used penalty-based variable selection methods. We apply the method to the CATHGEN data with a binary response from a coronary artery disease study, which motivated our research, and obtained new findings in both high-dimensional genetic and low-dimensional non-genetic covariates.
广义部分线性模型变量选择的破碎自适应脊法及其在冠心病数据中的应用
在CATHGEN数据的激励下,我们开发了一种新的统计学习方法,用于高维协变量数据的广义部分线性模型下的变量选择和参数估计。该方法被称为破碎自适应脊(BAR)估计器,它是通过迭代执行重新加权平方的L_2$惩罚回归来逼近L_0$惩罚回归。广义部分线性模型是对广义线性模型的扩展,它包含了一个非参数分量,从而构造了一个灵活的模型来模拟各种类型的协变量效应。我们采用Bernstein多项式作为筛选空间来逼近非参数函数,因此我们的方法可以很容易地使用现有的R包实现。大量的仿真研究表明,所提出的方法比其他常用的基于惩罚的变量选择方法性能更好。我们将该方法应用于一项冠状动脉疾病研究的双响应CATHGEN数据,这激发了我们的研究,并在高维遗传和低维非遗传协变量中获得了新的发现。
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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