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首页> 外文期刊>Journal of Multivariate Analysis: An International Journal >An RKHS-based approach to double-penalized regression in high-dimensional partially linear models
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An RKHS-based approach to double-penalized regression in high-dimensional partially linear models

机译:基于RKHS的高维部分线性模型中惩罚回归的方法

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We study simultaneous variable selection and estimation in high-dimensional partially linear models under the assumption that the nonparametric component is from a reproducing kernel Hilbert space (RKHS) and that the vector of regression coefficients for the parametric component is sparse. A double penalty is used to deal with the problem. The estimate of the nonparametric component is subject to a roughness penalty based on the squared semi-norm on the RKHS, and a penalty with oracle properties is used to achieve sparsity in the parametric component. Under regularity conditions, we establish the consistency and rate of convergence of the parametric estimation together with the consistency of variable selection. The proposed estimators of the non-zero coefficients are also shown to have the asymptotic oracle property. Simulations and empirical studies illustrate the performance of the method. (C) 2018 Elsevier Inc. All rights reserved.
机译:我们在假设非参数组分来自再现内核Hilbert空间(RKHS)的假设下在高维部分线性模型中研究同时可变选择和估计,并且参数分量的回归系数的向量是稀疏的。 双重罚款用于处理问题。 非参数组分的估计基于RKHS上的平方半导体的粗糙度惩罚,并且使用Oracle属性的惩罚用于在参数分量中实现稀疏性。 在规则条件下,我们建立了参数估计的一致性和汇率以及变量选择的一致性。 非零系数的所提出的估计也被显示为渐近Oracle属性。 模拟和实证研究说明了该方法的性能。 (c)2018年Elsevier Inc.保留所有权利。

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