To overcome the curse of dimensionality, dimension reduction is important and necessary for understanding the underlying phenomena in a variety of fields. Dimension reduction is the transformation of high-dimensional data into a meaningful representation in the low-dimensional space. It can be further classified into feature selection and feature extraction. In this thesis, which is composed of four projects, the first two focus on feature selection, and the last two concentrate on feature extraction. The content of the thesis is as follows. The first project presents several efficient methods for the sparse representation of a multiple measurement vector (MMV); some theoretical properties of the algorithms are also discussed. T...
Data is fundamental to how we understand the world around us. It is using data in which we develop u...
Random projection method is one of the important tools for the dimensionality reduction of data whic...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
High-dimensional data sets can be difficult to visualize and analyze, while data in low-dimensional ...
This paper presents and explains several methods of dimensionality reduction of data sets, beginning...
Machine learning methods are used to build models for classification and regression tasks, among oth...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In recent years computer power has increased massively which consequently has led to an increase in ...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
High-dimensional data are becoming increasingly available as data collection technology advances. Ov...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Thesis (M.Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In this thesis, we present Online Sufficient Dimensionality Reduction (OSDR) algorithm for real-time...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Data is fundamental to how we understand the world around us. It is using data in which we develop u...
Random projection method is one of the important tools for the dimensionality reduction of data whic...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...
High-dimensional data sets can be difficult to visualize and analyze, while data in low-dimensional ...
This paper presents and explains several methods of dimensionality reduction of data sets, beginning...
Machine learning methods are used to build models for classification and regression tasks, among oth...
In modern data analysis, problems involving high dimensional data with more variables than subjects ...
In recent years computer power has increased massively which consequently has led to an increase in ...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
High-dimensional data are becoming increasingly available as data collection technology advances. Ov...
The subject at hand is the dimensionality reduction of statistical manifolds by the use of informati...
Thesis (M.Eng.)--Massachusetts Institute of Technology, Dept. of Electrical Engineering and Computer...
In this thesis, we present Online Sufficient Dimensionality Reduction (OSDR) algorithm for real-time...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Data is fundamental to how we understand the world around us. It is using data in which we develop u...
Random projection method is one of the important tools for the dimensionality reduction of data whic...
Variable selection becomes more crucial than before, since high dimensional data are frequently seen...