Variable Selection for Panel Data Linear Regression Models with Fixed Effects

Xinye Hui
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Abstract

This paper introduces a robust variable selection mechanism for fixed effect panel data models by integrating compound quantile regression with the adjusted MIXED penalty method. Initially, forward orthogonal deviation transformation is employed to eliminate the influence of fixed effects. Subsequently, the MIXED penalty is utilized to construct a penalized compound quantile regression objective function, facilitating simultaneous estimation of regression coefficients and variable selection. This method not only effectively eliminates the interference of fixed effects but also demonstrates outstanding robustness. Its performance with limited sample sizes was validated through simulation studies, and its practical value was illustrated through application in real data analysis.
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具有固定效应的面板数据线性回归模型的变量选择
本文通过将复合量子回归与调整后的 MIXED 惩罚法相结合,为固定效应面板数据模型引入了一种稳健的变量选择机制。首先,采用正交偏差变换消除固定效应的影响。随后,利用 MIXED 惩罚法构建惩罚性复合量化回归目标函数,促进回归系数估计和变量选择的同步进行。这种方法不仅有效地消除了固定效应的干扰,而且表现出卓越的稳健性。通过模拟研究验证了该方法在样本量有限的情况下的性能,并通过实际数据分析中的应用说明了该方法的实用价值。
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