Many multivariate analysis problems are unified under the framework of linear projections. These projections can be tailored towards the analysis of variance (principal components), classification (discriminant analysis) or network recovery (canonical correlation analysis). Traditional techniques form these projections by using all of the original variables, however in recent years there has been a lot of interest in performing variable selection. The main goal of this dissertation is to elucidate some of the fundamental issues that arise in highdimensional multivariate analysis and provide computationally efficient and theoretically sound alternatives to existing heuristic technique
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
We provide methods that find sparse projection directions in a class of multivariate analysis method...
<div><p>Recent years have seen active developments of various penalized regression methods, such as ...
First part of the thesis focuses on sparse covariance matrices estimation under the scenario of larg...
data In this article, we introduce a procedure for selecting variables in principal components analy...
Many research proposals involve collecting multiple sources of information from a set of common samp...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Canonical correlation analysis (CCA) describes the associations between two sets of variables by max...
In this thesis, several methods are proposed to construct sparse models in different situations with...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Principal Component Analysis is a technique often found to be useful for identifying structure in mu...
This paper introduces a Projected Principal Component Analysis (Projected-PCA), which is based on th...
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...
We provide methods that find sparse projection directions in a class of multivariate analysis method...
<div><p>Recent years have seen active developments of various penalized regression methods, such as ...
First part of the thesis focuses on sparse covariance matrices estimation under the scenario of larg...
data In this article, we introduce a procedure for selecting variables in principal components analy...
Many research proposals involve collecting multiple sources of information from a set of common samp...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Canonical correlation analysis (CCA) describes the associations between two sets of variables by max...
In this thesis, several methods are proposed to construct sparse models in different situations with...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Principal Component Analysis is a technique often found to be useful for identifying structure in mu...
This paper introduces a Projected Principal Component Analysis (Projected-PCA), which is based on th...
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
Multidimensional Projection techniques are often used by data analysts for exploring multivariate da...
International audienceIn this paper, we deal with the issue of classifying normally distributed data...