Penalized regression estimators are popular tools for the analysis of sparse and high-dimensional models. However, penalized regression estimators defined using an unbounded loss function can be very sensitive to the presence of outlying observations, especially to high leverage outliers. The robust and asymptotic properties of ℓ1-penalized MM-estimators and MM-estimators with an adaptive ℓ1 penalty are studied. For the case of a fixed number of covariates, the asymptotic distribution of the estimators is derived and it is proven that for the case of an adaptive ℓ1 penalty, the resulting estimator can have the oracle property. The advantages of the proposed estimators are demonstrated through an extensive simulation study and the analysis o...
This paper considers inference in a linear regression model with outliers in which the number of out...
Penalized estimation principle is fundamental to high-dimensional problems. In the liter-ature, it h...
This paper considers the problem of inference in a linear regression model with outliers where the n...
Penalized regression estimators are a popular tool for the analysis of sparse and high-dimensional d...
Data sets where the number of variables p is comparable to or larger than the number of observations...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
AbstractWe study the distributions of the LASSO, SCAD, and thresholding estimators, in finite sample...
To perform regression analysis in high dimensions, lasso or ridge estimation are a common choice. Ho...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
Generalized linear models (GLM) and generalized additive models (GAM) are popular statistical method...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
This paper considers inference in a linear regression model with outliers in which the number of out...
Penalized estimation principle is fundamental to high-dimensional problems. In the liter-ature, it h...
This paper considers the problem of inference in a linear regression model with outliers where the n...
Penalized regression estimators are a popular tool for the analysis of sparse and high-dimensional d...
Data sets where the number of variables p is comparable to or larger than the number of observations...
Outliers in the data are a common problem in applied statistics. Estimators that give reliable resul...
AbstractWe study the distributions of the LASSO, SCAD, and thresholding estimators, in finite sample...
To perform regression analysis in high dimensions, lasso or ridge estimation are a common choice. Ho...
Penalized estimation principle is fundamental to high-dimensional problems. In the literature, it ha...
The use of regularization, or penalization, has become increasingly common in highdimensional statis...
Generalized linear models (GLM) and generalized additive models (GAM) are popular statistical method...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
We study the distributions of the LASSO, SCAD, and thresholding estimators, in finite samples and in...
This paper considers inference in a linear regression model with outliers in which the number of out...
Penalized estimation principle is fundamental to high-dimensional problems. In the liter-ature, it h...
This paper considers the problem of inference in a linear regression model with outliers where the n...