
A Theory of Learning and Generalization
With Applications to Neural Networks and Control Systems
Mathukumalli Vidyasagar(Author)
Springer (Publisher)
Published on 6. December 1996
Book
Hardback
XVIII, 383 pages
978-3-540-76120-4 (ISBN)
Article exhausted; check for reprint
Description
A Theory of Learning and Generalization provides a formal mathematical theory for addressing intuitive questions of the type: How does a machine learn a new concept on the basis of examples? How can a neural network, after sufficient training, correctly predict the output of a previously unseen input? How much training is required to achieve a specified level of accuracy in the prediction? How can one "identify" the dynamical behaviour of a nonlinear control system by observing its input-output behaviour over a finite interval of time? This is the first book to treat the problem of machine learning in conjunction with the theory of empirical processes, the latter being a well-established branch of probability theory. The treatment of both topics side by side leads to new insights, as well as new results in both topics. An extensive references section and open problems will help readers to develop their own work in the field.
More details
Series
Edition
1st Edition.
Language
English
Place of publication
London
United Kingdom
Publishing group
Springer Berlin
Target group
College/higher education
Professional and scholarly
Illustrations
36
36 s/w Abbildungen
36 figures
Dimensions
Height: 23.5 cm
Width: 15.5 cm
Weight
710 gr
ISBN-13
978-3-540-76120-4 (9783540761204)
Schweitzer Classification
Other editions
New editions

Book
09/2002
2nd Edition
Springer
€192.59
Shipment within 15-20 days
Content
Contents: Preface.- Introduction.- Preliminaries.- Problem Formulations.- Vapnik-Chervonenkis and Pollard (Pseudo-) Dimensions.- Uniform Convergence of Empirical Means.- Learning Under a Fixed Probability Measure.- Distribution-ree Learning.- Learning Under an Intermediate Family of Probabilities.- Alternate Models of Learning.- Applications to Neural Networks.- Applications to Control Systems.- Some Open Problems.