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Penalized least-squares estimation for regression coefficients in high-dimensional partially linear models

机译:高维部分线性模型中回归系数的罚最小二乘估计

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摘要

We consider a partially linear model with diverging number of groups of parameters in the parametric component. The variable selection and estimation of regression coefficients are achieved simultaneously by using the suitable penalty function for covariates in the parametric component. An MM-type algorithm for estimating parameters without inverting a high-dimensional matrix is proposed. The consistency and sparsity of penalized least-squares estimators of regression coefficients are discussed under the setting of some nonzero regression coefficients with very small values. It is found that the root p_n-consistency and sparsity of the penalized least-squares estimators of regression coefficients cannot be given consideration simultaneously when the number of nonzero regression coefficients with very small values is unknown, where p_n and n, respectively, denote the number of regression coefficients and sample size. The finite sample behaviors of penalized least-squares estimators of regression coefficients and the performance of the proposed algorithm are studied by simulation studies and a real data example.
机译:我们考虑部分线性模型,其中参数组件中的参数组数目不同。通过对参数分量中的协变量使用合适的惩罚函数,可以同时实现变量选择和回归系数估计。提出了一种无需倒置高维矩阵即可估计参数的MM型算法。在一些具有非常小的值的非零回归系数的设置下,讨论了回归系数的惩罚最小二乘估计量的一致性和稀疏性。发现当未知值很小的非零回归系数的数目未知时,不能同时考虑回归系数的惩罚最小二乘估计的根p_n / n-一致性和稀疏性,其中p_n和n分别表示回归系数的数量和样本量。通过仿真研究和一个真实的数据实例,研究了回归系数的惩罚最小二乘估计的有限样本行为和所提算法的性能。

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