Static and Dynamic Neural Networks: From Fundamentals to Advanced TheoryISBN: 978-0-471-21948-4
Hardcover
752 pages
April 2003, Wiley-IEEE Press
This is a Print-on-Demand title. It will be printed specifically to fill your order. Please allow an additional 15-20 days delivery time. The book is not returnable.
|
Preface.
Acknowledgments.
PART I: FOUNDATIONS OF NEURAL NETWORKS.
Neural Systems: An Introduction.
Biological Foundations of Neuronal Morphology.
Neural Units: Concepts, Models, and Learning.
PART II: STATIC NEURAL NETWORKS.
Multilayered Feedforward Neural Networks (MFNNs) and Backpropagation Learning Algorithms.
Advanced Methods for Learning Adaptation in MFNNs.
Radial Basis Function Neural Networks.
Function Approximation Using Feedforward Neural Networks.
PART III: DYNAMIC NEURAL NETWORKS.
Dynamic Neural Units (DNUs): Nonlinear Models and Dynamics.
Continuous-Time Dynamic Neural Networks.
Learning and Adaptation in Dynamic Neural Networks.
Stability of Continuous-Time Dynamic Neural Networks.
Discrete-Time Dynamic Neural Networks and Their Stability.
PART IV: SOME ADVANCED TOPICS IN NEURAL NETWORKS.
Binary Neural Networks.
Feedback Binary Associative Memories.
Fuzzy Sets and Fuzzy Neural Networks.
References and Bibliography.
Appendix A: Current Bibliographic Sources on Neural Networks.
Index.