Principal Component Neural Networks
Theory and Applications
Adaptive and Cognitive Dynamic Systems: Signal Processing, Learning, Communications and Control
1. Edition April 1996
XIV, 258 Pages, Hardcover
Wiley & Sons Ltd
Short Description
Examines the principles of biological systems in order to explain how the brain works. Understanding biological perceptual systems is of great importance to engineers and computer scientists in developing artificial perceptual sytems.
Systematically explores the relationship between principal component analysis (PCA) and neural networks. Provides a synergistic examination of the mathematical, algorithmic, application and architectural aspects of principal component neural networks. Using a unified formulation, the authors present neural models performing PCA from the Hebbian learning rule and those which use least squares learning rules such as back-propagation. Examines the principles of biological perceptual systems to explain how the brain works. Every chapter contains a selected list of applications examples from diverse areas.
Principal Component Analysis.
PCA Neural Networks.
Channel Noise and Hidden Units.
Heteroassociative Models.
Signal Enhancement Against Noise.
VLSI Implementation.
Appendices.
Bibliography.
Index.
S. Y. Kung is Professor of Electrical Engineering at Princeton University and received his PhD from Stanford University. He was formerly a professor of electrical engineering at the University of Southern California.