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首页> 外文期刊>Communications in Statistics >Adaptive elastic net-penalized quantile regression for variable selection
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Adaptive elastic net-penalized quantile regression for variable selection

机译:可变选择的自适应弹性净惩罚量级回归

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There has been much attention on the high-dimensional linear regression models, which means the number of observations is much less than that of covariates. Considering the fact that the high dimensionality often induces the collinearity problem, in this article, we study the penalized quantile regression with the elastic net (EnetQR) that combines the strengths of the quadratic regularization and the lasso shrinkage. We investigate the weak oracle property of the EnetQR under mild conditions in the high dimensional setting. Moreover, we propose a two-step procedure, called adaptive elastic net quantile regression (AEnetQR), in which the weight vector in the second step is constructed from the EnetQR estimate in the first step. This two-step procedure is justified theoretically to possess the weak oracle property. The finite sample properties are performed through the Monte Carlo simulation and a real-data analysis.
机译:在高维线性回归模型上有很多关注,这意味着观察的数量远低于协变量。考虑到高维度常常诱导共同性问题,在本文中,我们研究了与弹性网(ENETQR)进行惩罚的分位数回归,该净额将相结合了二次正则化的强度和套索收缩。我们调查了在高维设置下轻度条件下ENETQR的弱Oracle属性。此外,我们提出了一种称为自适应弹性净定量回归(AenetQR)的两步程序,其中第二步骤中的重量载体是从第一步中的EnetqR估计构成的。理论上,这两个步骤是合理的,拥有弱oracle财产。通过Monte Carlo仿真和实数据分析执行有限的样本性质。

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