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SCAD-Penalized Least Absolute Deviation Regression in High-Dimensional Models

机译:斯堪的惩罚最小的绝对偏差回归在高维模型中

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摘要

When outliers and/or heavy-tailed errors exist in linear models, the least absolute deviation (LAD) regression is a robust alternative to the ordinary least squares regression. Existing variable-selection methods in linear models based on LAD regression either only consider the finite number of predictors or lack the oracle property associated with the estimator. In this article, we focus on the variable selection via LAD regression with a diverging number of parameters. The rate of convergence of the LAD estimator with the smoothly clipped absolute deviation (SCAD) penalty function is established. Furthermore, we demonstrate that, under certain regularity conditions, the penalized estimator with a properly selected tuning parameter enjoys the oracle property. In addition, the rank correlation screening method originally proposed by Li et al. (2011) is applied to deal with ultrahigh dimensional data. Simulation studies are conducted for revealing the finite sample performance of the estimator. We further illustrate the proposed methodology by a real example.
机译:当在线性模型中存在异常值和/或重尾误差时,绝对偏差(LAD)回归是普通最小二乘回归的稳健替代。基于LAD回归的线性模型中的现有变量选择方法仅考虑有限数量的预测器或缺少与估计器相关的Oracle属性。在本文中,我们专注于通过带有分歧的参数分发回归的变量选择。建立了LAD估算器的收敛速度,具有平稳剪裁的绝对偏差(SCAD)惩罚功能。此外,我们证明,在某些规律条件下,带有正确选择的调整参数的惩罚估计器可以享受Oracle属性。此外,Li等人最初提出的等级相关筛选方法。 (2011)适用于处理超高尺寸数据。进行仿真研究,用于揭示估算器的有限样本性能。我们进一步通过真实例子说明了所提出的方法。

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