This dissertation addresses two problems. First, we study joint quantile regression at multiple quantile levels with high dimensional covariates. Variable selection performed at individual quantile levels may lack stability across neighboring quantiles, making it difficult to understand and to interpret the impact of a given covariate on conditional quantile functions. We propose a Dantzig-type penalization method for sparse model selection at each quantile level which at the same time aims to shrink differences of the selected models across neighboring quantiles. We show model selection consistency, and investigate stability of the selected models across quantiles. In the second part of the thesis, we consider the class of covariance model...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
The first part of the dissertation introduces several new methods for estimating the structure of gr...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
In this dissertation we develop theory for inference and uncertainty quantification for potentially ...
In this dissertation we develop theory for inference and uncertainty quantification for potentially ...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
In the first part of this thesis, we address the question of how new testing methods can be develope...
This dissertation contains the two research projects in my Ph.D. study. The first project considers ...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
University of Minnesota Ph.D. dissertation. May 2014. Major: Statistics. Advisor: Lan Wang. 1 comput...
Quantile regression is a useful tool for testing the possible effect of covariates, especially when ...
The first part of the dissertation introduces several new methods for estimating the structure of gr...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
Finite mixture regression (FMR) models are powerful modeling tools to analyze data of various types ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
The first part of the dissertation introduces several new methods for estimating the structure of gr...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
In this dissertation we develop theory for inference and uncertainty quantification for potentially ...
In this dissertation we develop theory for inference and uncertainty quantification for potentially ...
This thesis develops methodology and asymptotic analysis for sparse estimators of the covariance mat...
In the first part of this thesis, we address the question of how new testing methods can be develope...
This dissertation contains the two research projects in my Ph.D. study. The first project considers ...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
University of Minnesota Ph.D. dissertation. May 2014. Major: Statistics. Advisor: Lan Wang. 1 comput...
Quantile regression is a useful tool for testing the possible effect of covariates, especially when ...
The first part of the dissertation introduces several new methods for estimating the structure of gr...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
Finite mixture regression (FMR) models are powerful modeling tools to analyze data of various types ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
The first part of the dissertation introduces several new methods for estimating the structure of gr...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...