Search
 
Home| Join Our Mailing List| New Reviews| New Titles
Editor's Choice| Bestsellers| Textbooks| Book Series| Study Guides| E-Catalogues
  ENGINEERING
  Aerospace Engineering
Bioengineering/
Biomedical Engineering

Chemical Engineering
Civil/ Ocean/ Coastal/
Earthquake Engineering

Electrical and Electronic
Engineering
-Computer Engineering
-System Engineering

Industrial Engineering
Materials Engineering
Mechanical Engineering
-Engineering Mechanics

General
New Titles
December Bestsellers
Editor's Choice
Nobel lectures
Textbooks
Recent Reviews
Book Series
Related Journals
  • Biomedical Engineering (BME)
  • International Journal of Reliability, Quality and Safety Engineering (IJRQSE)
  • Request for related catalogues
     
      PRODUCTS
      Journals
    eBooks
    Journals Archives
    eProceedings
     
      RESOURCES
      Print flyer
  • Full Version
  • Condensed Version
  • Recommend title
    Request for Inspection copy
    For Librarians
    For Authors
    For Booksellers
    For Translation Rights About Us
    Contact Us
    How to Order News
     
    Bookmark and Share

    PRINCIPLES OF ARTIFICIAL NEURAL NETWORKS

    by Daniel Graupe (University of Illinois, Chicago)

    Table of Contents (115k)
    Preface (103k)
    Chapter 1: Introduction and Role of Artificial Neural Networks (190k)

    This textbook is intended for a first-year graduate course on Artificial Neural Networks. It assumes no prior background in the subject and is directed to MS students in electrical engineering, computer science and related fields, with background in at least one programming language or in a programming tool such as Matlab, and who have taken the basic undergraduate classes in systems or in signal processing.

    The uniqueness of the book is in the breadth of its coverage over the range of all major artificial neural network approaches and in extensive hands-on case-studies on each and every neural network considered. These detailed case studies include complete program print-outs and results and deal with a range of problems, to illustrate the reader's ability to solve problems ranging from speech recognition, character recognition to control and signal processing problems, all on the basis of following the present text. Another unique aspect of the text is its coverage of important new topics of recurrent (time-cycling) networks and of large memory storage and retrieval problems.

    The text also attempts to show the reader how he can modify or combine one or more of the neural networks covered, to tailor them to a given problem which does not appear to fit any of the more standard designs, as is very often the case.

     
    Contents:
    • Introduction and Role of Artificial Neural Networks
    • Fundamentals of Biological Neural Networks
    • Basic Principles of ANN and Their Early Structures
    • The Madaline
    • The Perceptron
    • Back Propagation
    • Hopfield Networks
    • Counter Propagation
    • Adaptive Resonance Theory
    • The Cognitron and the Neocognitron
    • Statistical Training
    • Recurrent (Time-Cycling) Back Propagation Networks
    • Large-Scale Memory Storage and Retrieval (LAMSTAR) Network
     
    Readership: First year graduate course in artificial neural networks.
     
     
    252pp    Pub. date: Jul 1997  
    ISBN:   978-981-02-2516-2
    981-02-2516-4
       US$53 / £35

     


    252pp    Pub. date: Jul 1997  
    ISBN:   978-981-02-4125-4(pbk)
    981-02-4125-9(pbk)
       US$32 / £21

     


     

    Imperial College Press  |  Global Publishing  |  Asia-Pacific Biotech News  |  Innovation Magazine
    Labcreations Co  |  Meeting Matters  |  National Academies Press

    Copyright © 2012 World Scientific Publishing Co. All rights reserved.
    Updated on 13 February 2012