Fr. 165.00

Optimization Techniques

English · Hardback

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Description

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Key Features * Provides in-depth treatment of theoretical contributions to optimal learning for neural network systems * Offers a comprehensive treatment of orthogonal transformation techniques for the optimization of neural network systems * Includes illustrative examples and comprehensive treatment of sequential constructive techniques for optimization of neural network systems * Presents a uniquely comprehensive treatment of the highly effective fast back propagation algorithms for the optimization of neural network systems * Treats, in detail, optimization techniques for neural network systems with nonstationary or dynamic inputs * Covers optimization techniques and applications of neural network systems in constraint satisfaction Zusammenfassung Presents a reference source to a diverse array of methods for achieving optimization, and includes both systems structures and computational methods. This book presents optimization techniques for neural network systems with nonstationary or dynamic inputs. It covers optimization techniques and applications of neural network systems....

Product details

Authors Cornelius T. Leondes, Cornelius T. (University of California Leondes
Assisted by Cornelius T. Leondes (Editor)
Publisher ELSEVIER SCIENCE BV
 
Languages English
Product format Hardback
Released 01.01.2008
 
EAN 9780124438620
ISBN 978-0-12-443862-0
No. of pages 398
Series Neural Network Systems Techniq
Neural Network Systems Techniq
Neural Network Systems Techniques and Applications
Subject Natural sciences, medicine, IT, technology > IT, data processing > Data communication, networks

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