CSP平台首页  |  Home  |  Search  |  For Researchers  |  For Librarians  |  Customer Service  | 登录
PRINCIPLES OF ARTIFICIAL NEURAL NETWORKS


PRINCIPLES OF ARTIFICIAL NEURAL NETWORKS
(2nd Edition)

by Daniel Graupe (University of Illinois, Chicago, USA)

The book should serve as a text for a university graduate course or for an advanced undergraduate course on neural networks in engineering and computer science departments. It should also serve as a self-study course for engineers and computer scientists in the industry. Covering major neural network approaches and architectures with the theories, this text presents detailed case studies for each of the approaches, accompanied with complete computer codes and the corresponding computed results. The case studies are designed to allow easy comparison of network performance to illustrate strengths and weaknesses of the different networks.


Contents:

  • Introduction and Role of Artificial Neural Networks
  • Fundamentals of Biological Neural Networks
  • Basic Principles of ANNs and Their Early Structures
  • The Perceptron
  • The Madaline
  • Back Propagation
  • Hopfield Networks
  • Counter Propagation
  • Adaptive Resonance Theory
  • The Cognitron and the Neocogntiron
  • Statistical Training
  • Recurrent (Time Cycling) Back Propagation Networks
  • Large Scale Memory Storage and Retrieval (LAMSTAR) Network

View Full Text (6,021 KB)

Readership: Graduate and advanced senior students in electrical and computer engineering, computer science, biomedical engineering, systems analysts anddata mining engineers.

 
320pp
Pub. date: Apr 2007
eISBN 978-9-812-77057-8
Price: US$101
 
 
 

Copyright ©2007 World Scientific Publishing Co. All rights reserved.