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Automatic Structure Discovery for Varying-coefficient Partially Linear Models

机译:变系数部分线性模型的自动结构发现

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摘要

Varying-coefficient partially linear models provide a useful tools for modeling of covariate effects on the response variable in regression. One key question in varying-coefficient partially linear models is the choice of model structure, that is, how to decide which covariates have linear effect and which have nonlinear effect. In this article, we propose a profile method for identifying the covariates with linear effect or nonlinear effect. Our proposed method is a penalized regression approach based on group minimax concave penalty. Under suitable conditions, we show that the proposed method can correctly determine which covariates have a linear effect and which do not with high probability. The convergence rate of the linear estimator is established as well as the asymptotical normality. The performance of the proposed method is evaluated through a simulation study which supports our theoretical results.
机译:变系数部分线性模型为建模协变量对回归中的响应变量的影响提供了有用的工具。变系数部分线性模型的一个关键问题是模型结构的选择,即如何确定哪些协变量具有线性效应和哪些具有非线性效应。在本文中,我们提出了一种用于识别具有线性效应或非线性效应的协变量的轮廓方法。我们提出的方法是基于群最小极大凹罚的惩罚回归方法。在适当的条件下,我们证明了所提出的方法可以正确地确定哪些协变量具有线性效应,哪些协变量不具有高概率。建立线性估计器的收敛速度以及渐近正态性。通过模拟研究评估了所提出方法的性能,该研究支持了我们的理论结果。

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