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Variable Selection For Partially Linear Modelswith Measurement Errors

机译:具有测量误差的部分线性模型的变量选择

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This article focuses on variable selection for partially linear models when the covariates are measured with additive errors. We propose two classes of variable selection procedures, penalized least squares and penalized quantile regression, using the nonconvex penalized principle. The first procedure corrects the bias in the loss function caused by the measurement error by applying the so-called correction-for-attenuation approach, whereas the second procedure corrects the bias by using orthogonal regression. The sampling properties for the two procedures are investigated. The rate of convergence and the asymptotic normality of the resulting estimates are established. We further demonstrate that, with proper choices of the penalty functions and the regularization parameter, the resulting estimates perform asymptotically as well as an oracle property. Choice of smoothing parameters is also discussed. Finite sample performance of the proposed variable selection procedures is assessed by Monte Carlo simulation studies. We further illustrate the proposed procedures by an application.
机译:本文着重介绍当协变量带有加性误差时,部分线性模型的变量选择。我们使用非凸罚分原理提出两类变量选择程序,即罚最小二乘和分位数罚分回归。第一个过程通过应用所谓的衰减校正方法来校正由测量误差引起的损耗函数中的偏差,而第二个过程通过使用正交回归来校正偏差。研究了这两个过程的采样属性。确定了最终估计的收敛速度和渐近正态性。我们进一步证明,通过适当选择惩罚函数和正则化参数,所得估计值将渐近地表现为预言值,并具有预言性。还讨论了平滑参数的选择。通过蒙特卡洛模拟研究评估了所提出的变量选择程序的有限样本性能。我们通过应用程序进一步说明建议的过程。

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