Learning with Recurrent Neural Networks

Lieferzeit: Lieferbar innerhalb 14 Tagen

53,49 

Lecture Notes in Control and Information Sciences 254

ISBN: 185233343X
ISBN 13: 9781852333430
Autor: Hammer, Barbara
Verlag: Springer Verlag GmbH
Umfang: 150 S.
Erscheinungsdatum: 30.05.2000
Produktform: Kartoniert
Einband: KT

InhaltsangabeRecurrent and folding networks.- Approximation ability.- Learnability.- Complexity.- Conclusion.

The book details a new approach which enables neural networks to deal with symbolic data, folding networksIt presents both practical applications and a precise theoretical foundation

Artikelnummer: 1591818 Kategorie:

Beschreibung

Folding networks, a generalisation of recurrent neural networks to tree structured inputs, are investigated as a mechanism to learn regularities on classical symbolic data, for example. The architecture, the training mechanism, and several applications in different areas are explained. Afterwards a theoretical foundation, proving that the approach is appropriate as a learning mechanism in principle, is presented: Their universal approximation ability is investigated- including several new results for standard recurrent neural networks such as explicit bounds on the required number of neurons and the super Turing capability of sigmoidal recurrent networks. The information theoretical learnability is examined - including several contribution to distribution dependent learnability, an answer to an open question posed by Vidyasagar, and a generalisation of the recent luckiness framework to function classes. Finally, the complexity of training is considered - including new results on the loading problem for standard feedforward networks with an arbitrary multilayered architecture, a correlated number of neurons and training set size, a varying number of hidden neurons but fixed input dimension, or the sigmoidal activation function, respectively.

Inhaltsverzeichnis

Introduction, Recurrent and Folding Networks: Definitions, Training, Background, Applications.- Approximation Ability: Foundationa, Approximation in Probability, Approximation in the Maximum Norm, Discussions and Open Questions.- Learnability: The Learning Scenario, PAC Learnability, Bounds on the VC-dimension of Folding Networks, Consquences for Learnability, Lower Bounds for the LRAAM, Discussion and Open Questions.- Complexity: The Loading Problem, The Perceptron Case, The Sigmoidal Case, Discussion and Open Questions.- Conclusion.

Das könnte Ihnen auch gefallen …