Thesis (Ph.D.)--University of Washington, 2022Dimensionality reduction is an essential topic in data science, particularly when data are high-dimensional or have more features than samples. The process of reducing the data dimension usually involves solving an eigenvalue problem. For example, the ubiquitously used principal component analysis obtains the principal subspace by solving a standard eigenvalue problem, and linear discriminant analysis obtains a discriminative subspace by solving a generalized eigenvalue problem. A vast array of real-world data problems can be framed mathematically as variants of eigenvalue problems, including eigenvalue problems with sparsity constraints and penalties, and nonlinear eigenvalue problems. In this ...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
In this paper, we develop a new approach for dimensionality reduction of labeled data. This approach...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
The last few years have seen a great increase in the amount of data available to scientists. Dataset...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Linear Discriminant Analysis (LDA) is a very commontechnique for dimensionality reduction problems a...
Many dimensionality reduction problems end up with a trace quotient formulation. Since it is difficu...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Some state-of-the-art dimensionality reduction techniques are reviewed and investigated in this thes...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
In this paper, we develop a new approach for dimensionality reduction of labeled data. This approach...
The use of dimensionality reduction techniques is a keystone for analyzing and interpreting high dim...
We consider supervised dimension reduction (SDR) for problems with discrete inputs. Existing methods...
The last few years have seen a great increase in the amount of data available to scientists. Dataset...
The analysis of high-dimensional data often begins with the identification of lower dimensional subs...
Linear dimensionality reduction methods are a cornerstone of analyzing high dimensional data, due to...
Linear Discriminant Analysis (LDA) is a very commontechnique for dimensionality reduction problems a...
Many dimensionality reduction problems end up with a trace quotient formulation. Since it is difficu...
Dimensionality reduction is the transformation of data from a high-dimensional space into a low-dime...
Machine learning methods are used to build models for classification and regression tasks, among oth...
Some state-of-the-art dimensionality reduction techniques are reviewed and investigated in this thes...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
In this paper, we propose a nonlinear dimensionality reduction method aimed at extracting lower-dime...
Reducing the dimensionality of data without losing intrinsic information is an important preprocessi...