Variable selection for semivarying coefficient models via local averaging

Pub Date : 2024-06-01 DOI:10.1002/sta4.703
Xinyi Qi, Mengjie Liu, Chuanlong Xie, Heng Peng
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Abstract

This study aims to provide novel insights into variable selection in the semivarying coefficient model. We focus on the problem of variable selection and screening for the constant coefficient part. A common approach in the existing literature is to infer the constant coefficients by transforming the problem into a linear model scenario, utilizing a fine estimator of the varying coefficients. In this paper, we propose an approximation method for the varying coefficient functions using local averaging, which is characterized by its simplicity, rough and computational efficiency. Additionally, we introduce an adaptive lasso estimator and a forward regression algorithm specifically designed for semivarying coefficient models. Theoretical and experimental results highlight the effectiveness of the local averaging method in extending variable selection techniques from the linear model to the semivarying coefficient model. Our proposed approaches demonstrate a significant improvement in inference speed compared with baseline methods, with little loss of asymptotic efficiency.
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通过局部平均法为半变量系数模型选择变量
本研究旨在为半变量系数模型中的变量选择提供新的见解。我们重点关注常数系数部分的变量选择和筛选问题。现有文献中的一种常见方法是通过将问题转化为线性模型情景,利用对变化系数的精细估计来推断常数系数。在本文中,我们提出了一种利用局部平均法逼近变化系数函数的方法,该方法的特点是简单、粗略和计算效率高。此外,我们还介绍了一种自适应套索估计器和一种专为半变量系数模型设计的前向回归算法。理论和实验结果凸显了局部平均法在将变量选择技术从线性模型扩展到半变量系数模型方面的有效性。与基线方法相比,我们提出的方法大大提高了推断速度,而且几乎没有损失渐进效率。
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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