Our systems are now restored following recent technical disruption, and we’re working hard to catch up on publishing. We apologise for the inconvenience caused. Find out more

Recommended product

Popular links

Popular links


Discrete Mathematics of Neural Networks

Discrete Mathematics of Neural Networks

Discrete Mathematics of Neural Networks

Selected Topics
Martin Anthony, London School of Economics and Political Science
April 2001
Hardback
9780898714807
Hardback

    This concise, readable book provides a sampling of the very large, active, and expanding field of artificial neural network theory. It considers select areas of discrete mathematics linking combinatorics and the theory of the simplest types of artificial neural networks. Neural networks have emerged as a key technology in many fields of application, and an understanding of the theories concerning what such systems can and cannot do is essential. Some classical results are presented with accessible proofs, together with some more recent perspectives, such as those obtained by considering decision lists. In addition, probabilistic models of neural network learning are discussed. Graph theory, some partially ordered set theory, computational complexity, and discrete probability are among the mathematical topics involved. Pointers to further reading and an extensive bibliography make this book a good starting point for research in discrete mathematics and neural networks.

    Product details

    April 2001
    Hardback
    9780898714807
    143 pages
    261 × 184 × 12 mm
    0.495kg
    This item is not supplied by Cambridge University Press in your region. Please contact Soc for Industrial & Applied Mathematics for availability.

    Table of Contents

    • Preface
    • 1. Artificial Neural Networks
    • 2. Boolean Functions
    • 3. Threshold Functions
    • 4. Number of Threshold Functions
    • 5. Sizes of Weights for Threshold Functions
    • 6. Threshold Order
    • 7. Threshold Networks and Boolean Functions
    • 8. Specifying Sets
    • 9. Neural Network Learning
    • 10. Probabilistic Learning
    • 11. VC-Dimensions of Neural Networks
    • 12. The Complexity of Learning
    • 13. Boltzmann Machines and Combinatorial Optimization
    • Bibliography
    • Index.