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首页> 外文期刊>Communications in Statistics >Sparsity identification in ultra-high dimensional quantile regression models with longitudinal data
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Sparsity identification in ultra-high dimensional quantile regression models with longitudinal data

机译:具有纵向数据的超高维定位回归模型中的稀疏识别

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摘要

In this paper, we propose a variable selection method for quantile regression model in ultra-high dimensional longitudinal data called as the weighted adaptive robust lasso (WAR-Lasso) which is double-robustness. We derive the consistency and the model selection oracle property of WAR-Lasso. Simulation studies show the double-robustness of WAR-Lasso in both cases of heavy-tailed distribution of the errors and the heavy contaminations of the covariates. WAR-Lasso outperform other methods such as SCAD and etc. A real data analysis is carried out. It shows that WAR-Lasso tends to select fewer variables and the estimated coefficients are in line with economic significance.
机译:在本文中,我们提出了一种变量选择方法,用于量化的超高尺度纵向数据中称为加权自适应鲁斯套索(WAR-LASSO)的量级回归模型,这是双稳压的。我们派生了War-Lasso的一致性和模型选择Oracle属性。仿真研究表明,两种误差分布的误差和协变量沉重污染的两种情况下的战争套索的双重稳健性。 War-Lasso优于其他方法,如仓库等。进行实际数据分析。它表明,WAR-LASSO倾向于选择较少的变量,并且估计的系数符合经济意义。

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