High-dimensional data have commonly emerged in diverse fields, such as economics, finance, genetics, medicine, machine learning, and so on. In this paper, we consider the sparse quantile regression problem of high-dimensional data with heavy-tailed noise, especially when the number of regressors is much larger than the sample size. We bring the spirit of Lp-norm support vector regression into quantile regression and propose a robust Lp-norm support vector quantile regression for high-dimensional data with heavy-tailed noise. The proposed method achieves robustness against heavy-tailed noise due to its use of the pinball loss function. Furthermore, Lp-norm support vector quantile regression ensures that the most representative variables are ...
We consider a flexible semiparametric quantile regression model for analyzing high dimensional heter...
Hypothesis tests in models whose dimension far exceeds the sample size can be formulated much like t...
Robust and sparse estimation of linear regression coefficients is investigated. The situation addres...
High-dimensional data have commonly emerged in diverse fields, such as economics, finance, genetics,...
Ultra-high dimensional data often display heterogeneity due to either heteroscedastic variance or ot...
The composite quantile regression (CQR) was introduced by Zou and Yuan [Ann. Statist. 36 (2008) 1108...
This article introduces a quantile penalized regression technique for variable selection and estimat...
We propose a generalization of the linear panel quantile regression model to accommodate both sparse...
We consider median regression and, more generally, a possibly infinite collection of quantile regres...
University of Minnesota Ph.D. dissertation. June 2017. Major: Statistics. Advisor: Hui Zou. 1 comput...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
We consider median regression and, more generally, a possibly infinite collection of quantile regres...
We consider both $\ell _{0}$-penalized and $\ell _{0}$-constrained quantile regression estimators. F...
Data subject to heavy-tailed errors are commonly encountered in various scientific fields. To addres...
$L_1$-regularized quantile regression ($l_1$-QR) provides a fundamental technique for analyzing high...
We consider a flexible semiparametric quantile regression model for analyzing high dimensional heter...
Hypothesis tests in models whose dimension far exceeds the sample size can be formulated much like t...
Robust and sparse estimation of linear regression coefficients is investigated. The situation addres...
High-dimensional data have commonly emerged in diverse fields, such as economics, finance, genetics,...
Ultra-high dimensional data often display heterogeneity due to either heteroscedastic variance or ot...
The composite quantile regression (CQR) was introduced by Zou and Yuan [Ann. Statist. 36 (2008) 1108...
This article introduces a quantile penalized regression technique for variable selection and estimat...
We propose a generalization of the linear panel quantile regression model to accommodate both sparse...
We consider median regression and, more generally, a possibly infinite collection of quantile regres...
University of Minnesota Ph.D. dissertation. June 2017. Major: Statistics. Advisor: Hui Zou. 1 comput...
Heavy-tailed high-dimensional data are commonly encountered in var-ious scientific fields and pose g...
We consider median regression and, more generally, a possibly infinite collection of quantile regres...
We consider both $\ell _{0}$-penalized and $\ell _{0}$-constrained quantile regression estimators. F...
Data subject to heavy-tailed errors are commonly encountered in various scientific fields. To addres...
$L_1$-regularized quantile regression ($l_1$-QR) provides a fundamental technique for analyzing high...
We consider a flexible semiparametric quantile regression model for analyzing high dimensional heter...
Hypothesis tests in models whose dimension far exceeds the sample size can be formulated much like t...
Robust and sparse estimation of linear regression coefficients is investigated. The situation addres...