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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >Parametric component detection and variable selection in varying-coefficient partially linear models
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Parametric component detection and variable selection in varying-coefficient partially linear models

机译:变系数部分线性模型中的参数成分检测和变量选择

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In this paper we are concerned with detecting the true structure of a varying-coefficient partially linear model. The first issue is to identify whether a coefficient is parametric. The second issue is to select significant covariates in both nonparametric and parametric portions. In order to simultaneously address both issues, we propose to combine local linear smoothing and the adaptive LASSO and penalize both the coefficient functions and their derivatives using an adaptive L _1 penalty. We give conditions under which this new adaptive LASSO consistently identifies the significant variables and parametric components along with estimation sparsity. Simulated and real data analysis demonstrate the proposed methodology.
机译:在本文中,我们关注的是检测变系数部分线性模型的真实结构。第一个问题是确定系数是否为参数。第二个问题是在非参数和参数部分中选择重要的协变量。为了同时解决这两个问题,我们建议结合使用局部线性平滑和自适应LASSO,并使用自适应L _1罚分对系数函数及其导数进行惩罚。我们给出了这种新的自适应LASSO能够始终如一地识别出重要变量和参数成分以及估计稀疏性的条件。模拟和真实数据分析证明了所提出的方法。

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