Statistical signal processing with nonnegativity constraints

Loading...
Thumbnail Image
Penn collection
Departmental Papers (CIS)
General Robotics, Automation, Sensing and Perception Laboratory
Degree type
Discipline
Subject
GRASP
Computer Engineering
Computer Sciences
Funder
Grant number
License
Copyright date
Distributor
Related resources
Contributor
Abstract

Nonnegativity constraints arise frequently in statistical learning and pattern recognition. Multiplicative updates provide natural solutions to optimizations involving these constraints. One well known set of multiplicative updates is given by the Expectation-Maximization algorithm for hidden Markov models, as used in automatic speech recognition. Recently, we have derived similar algorithms for nonnegative deconvolution and nonnegative quadratic programming. These algorithms have applications to low-level problems in voice processing, such as fundamental frequency estimation, as well as high-level problems, such as the training of large margin classifiers. In this paper, we describe these algorithms and the ideas that connect them.

Advisor
Date of presentation
2003-09-01
Conference name
Departmental Papers (CIS)
Conference dates
2023-05-16T21:37:51.000
Conference location
Date Range for Data Collection (Start Date)
Date Range for Data Collection (End Date)
Digital Object Identifier
Series name and number
Volume number
Issue number
Publisher
Publisher DOI
Journal Issue
Comments
Proceedings of the Eighth European Conference on Speech Communication and Technology, volume 2, pages 1001-1004, held 1-4 September 2003 in Geneva, Switzerland.
Proceedings of the Eighth European Conference on Speech Communication and Technology, volume 2, pages 1001-1004, held 1-4 September 2003 in Geneva, Switzerland.
Recommended citation
Collection