Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it has been extensively and successfully applied to various models with only structural parameters. As a contrast, in this paper, we first apply this penalization principle to a linear regression model with a finite-dimensional vector of structural parameters and a high-dimensional vector of sparse incidental parameters. For the estimators of the structural parameters, we derive their consistency and asymptotic normality, which reveals an oracle property. However, the penalized estimators for the incidental parameters possess only partial selection consistency but not consistency. This is an interesting partial consistency phenomenon: the structur...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
This article focuses on variable selection for partially linear models when the covariates are measu...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
Penalized estimation principle is fundamental to high-dimensional problems. In the liter-ature, it h...
Summary. We consider the problem of simultaneous variable selection and estimation in partially line...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
no issnWe perform inference for the sparse and potentially high-dimensional parametric part of a par...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Penalized regression estimators are popular tools for the analysis of sparse and high-dimensional mo...
It has been shown that AIC-type criteria are asymptotically efficient selectors of the tuning parame...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
In sparse high-dimensional data, the selection of a model can lead to an overestimation of the numbe...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
This article focuses on variable selection for partially linear models when the covariates are measu...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
Penalized estimation principle is fundamental to high-dimensional problems. In the liter-ature, it h...
Summary. We consider the problem of simultaneous variable selection and estimation in partially line...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
no issnWe perform inference for the sparse and potentially high-dimensional parametric part of a par...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Penalized regression estimators are popular tools for the analysis of sparse and high-dimensional mo...
It has been shown that AIC-type criteria are asymptotically efficient selectors of the tuning parame...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
In many practical situations, it is highly desirable to estimate an accurate mathematical model of a...
<p>In high-dimensional and/or non-parametric regression problems, regularization (or penalization) i...
In sparse high-dimensional data, the selection of a model can lead to an overestimation of the numbe...
Due to the increasing availability of data sets with a large number of variables, sparse model estim...
This article focuses on variable selection for partially linear models when the covariates are measu...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...