Generalized Eigenvalue Problems (GEPs) encompass a range of interesting dimensionality reduction methods. Development of efficient stochastic approaches to these problems would allow them to scale to larger datasets. Canonical Correlation Analysis (CCA) is one example of a GEP for dimensionality reduction which has found extensive use in problems with two or more views of the data. Deep learning extensions of CCA require large mini-batch sizes, and therefore large memory consumption, in the stochastic setting to achieve good performance and this has limited its application in practice. Inspired by the Generalized Hebbian Algorithm, we develop an approach to solving stochastic GEPs in which all constraints are softly enforced by Lagrange mul...
In this paper, we study the problems of principal Generalized Eigenvector computation and Canonical ...
Modern data sets are large and complicated. The demand for understanding the nature of such big data...
We propose a deep generative framework for multi-view learning based on a probabilistic interpretati...
We present a novel multitask learning framework called multitask generalized eigenvalue program (MTG...
The generalized eigenvalue problem (GEP) is a fundamental concept in numerical linear algebra. It ca...
This paper presents a novel algorithm for analysis of stochastic processes. The algorithm can be use...
Thesis (Ph.D.)--University of Washington, 2022Dimensionality reduction is an essential topic in data...
This paper presents a generalized incremental Laplacian Eigenmaps (GENILE), a novel online version o...
We discuss the sparse Canonical Correlation Analysis (CCA) problem in the context of high-dimensiona...
We propose a new algorithm for sparse estimation of eigenvectors in generalized eigenvalue problems ...
Feature extraction is an extremely important pre-processing step to pattern recognition, and machine...
Eigenvalue problems are rampant in machine learning and statistics and appear in the context of clas...
In our recent publication [1], we began with an understanding that many real-world applications of m...
This paper investigates a general family of models that stratifies the space of covariance matrices ...
This paper presents a novel algorithm for finding the solution of the generalized eigenproblem where...
In this paper, we study the problems of principal Generalized Eigenvector computation and Canonical ...
Modern data sets are large and complicated. The demand for understanding the nature of such big data...
We propose a deep generative framework for multi-view learning based on a probabilistic interpretati...
We present a novel multitask learning framework called multitask generalized eigenvalue program (MTG...
The generalized eigenvalue problem (GEP) is a fundamental concept in numerical linear algebra. It ca...
This paper presents a novel algorithm for analysis of stochastic processes. The algorithm can be use...
Thesis (Ph.D.)--University of Washington, 2022Dimensionality reduction is an essential topic in data...
This paper presents a generalized incremental Laplacian Eigenmaps (GENILE), a novel online version o...
We discuss the sparse Canonical Correlation Analysis (CCA) problem in the context of high-dimensiona...
We propose a new algorithm for sparse estimation of eigenvectors in generalized eigenvalue problems ...
Feature extraction is an extremely important pre-processing step to pattern recognition, and machine...
Eigenvalue problems are rampant in machine learning and statistics and appear in the context of clas...
In our recent publication [1], we began with an understanding that many real-world applications of m...
This paper investigates a general family of models that stratifies the space of covariance matrices ...
This paper presents a novel algorithm for finding the solution of the generalized eigenproblem where...
In this paper, we study the problems of principal Generalized Eigenvector computation and Canonical ...
Modern data sets are large and complicated. The demand for understanding the nature of such big data...
We propose a deep generative framework for multi-view learning based on a probabilistic interpretati...