Hebbian Learning and Negative Feedback Networks - Brossura

Fyfe, Colin

 
9781849969451: Hebbian Learning and Negative Feedback Networks

Sinossi

A state of the art specialist monograph on artificial neural networks which use Hebbian learning, covering a wide range of real experiments and which displays how it’s approaches can be applied to analyse real problems. The book has a thorough approach and brings together a wide range of concepts into a coherent whole. Colin Fyfe writes with authority, and is a well-known, experienced researcher who has led a team working in this area at Paisley.

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Recensione

From the reviews of the first edition:

"This book is concerned with developing unsupervised learning procedures and building self organizing network modules that can capture regularities of the environment. ... the book provides a detailed introduction to Hebbian learning and negative feedback neural networks and is suitable for self-study or instruction in an introductory course." (Nicolae S. Mera, Zentralblatt MATH, Vol. 1069, 2005)

Contenuti

Introduction Part I - Single Stream Networks Background The Negative Feedback Network Peer-Inhibitory Neurons Multiple Cause Data Exploratory Data Analysis Topology Preserving Maps Maximum Likelihood Hebbian Learning Part II - Dual Stream Networks Two Neural Networks for Canonical Correlation Analysis Alternative Derivations of CCA Networks Kernel and Nonlinear Correlations Exploratory Correlation Analysis Multicollinearity and Partial Least Squares Twinned Principal curves The Future App. A. Negative Feedback Artificial Neural Networks B. Previous Factor Analysis Models C. Related Models for ICA D. Previous Dual Stream Approaches E. Data Sets References Index

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Altre edizioni note dello stesso titolo

9781852338831: Hebbian Learning And Negative Feedback Networks

Edizione in evidenza

ISBN 10:  1852338830 ISBN 13:  9781852338831
Casa editrice: Springer-Verlag New York Inc, 2005
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