<div><p>In the economics and biological gene expression study area where a large number of variables will be involved, even when the predictors are independent, as long as the dimension is high, the maximum sample correlation can be large. Variable selection is a fundamental method to deal with such models. The ridge regression performs well when the predictors are highly correlated and some nonconcave penalized thresholding estimators enjoy the nice oracle property. In order to provide a satisfactory solution to the collinearity problem, in this paper we report the combined-penalization (CP) mixed by the nonconcave penalty and ridge, with a diverging number of parameters. It is observed that the CP estimator with a diverging number of para...
Abstract In high-dimensional data analysis, penalized like-lihood estimators are shown to provide su...
New challenges within statistical sciences have arisen with the explosive growth of information. Cla...
High-dimensional correlated data arise frequently in many studies. My primary research interests lie...
A class of variable selection procedures for parametric models via nonconcave penalized likelihood i...
We propose a new penalized least squares approach to handling high-dimensional statistical analysis ...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Penalized regression methods offer an attractive alternative to single marker testing in genetic ass...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
In multi-locus association analysis, since some markers may not be associated with a trait, it seems...
With the advancement of technology, analysis of large-scale data of gene expression is feasible and ...
It is becoming increasingly common in longitudinal studies to collect and analyze data on multiple r...
High-dimensional sparse modeling with censored survival data is of great practical importance, as ex...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Abstract In high-dimensional data analysis, penalized like-lihood estimators are shown to provide su...
New challenges within statistical sciences have arisen with the explosive growth of information. Cla...
High-dimensional correlated data arise frequently in many studies. My primary research interests lie...
A class of variable selection procedures for parametric models via nonconcave penalized likelihood i...
We propose a new penalized least squares approach to handling high-dimensional statistical analysis ...
We propose penalized empirical likelihood for parameter estimation and variable selection for proble...
Variable selection is fundamental to high dimensional statistical modeling. In this study, penalized...
... In this article, penalized likelihood approaches are proposed to handle these kinds of problems....
Penalized regression methods offer an attractive alternative to single marker testing in genetic ass...
Variable selection and estimation for high-dimensional data have become a topic of foremost importan...
In multi-locus association analysis, since some markers may not be associated with a trait, it seems...
With the advancement of technology, analysis of large-scale data of gene expression is feasible and ...
It is becoming increasingly common in longitudinal studies to collect and analyze data on multiple r...
High-dimensional sparse modeling with censored survival data is of great practical importance, as ex...
Selection of variables and estimation of regression coefficients in datasets with the number of vari...
Abstract In high-dimensional data analysis, penalized like-lihood estimators are shown to provide su...
New challenges within statistical sciences have arisen with the explosive growth of information. Cla...
High-dimensional correlated data arise frequently in many studies. My primary research interests lie...