Fr. 69.00

Theory and Applications of Neural Networks - Proceedings of the First British Neural Network Society Meeting, London

Inglese · Tascabile

Spedizione di solito entro 1 a 2 settimane (il titolo viene stampato sull'ordine)

Descrizione

Ulteriori informazioni

This volume contains the papers from the first British Neural Network Society meeting held at Queen Elizabeth Hall, King's College, London on 18--20 April 1990. The meeting was sponsored by the London Mathemati cal Society. The papers include introductory tutorial lectures, invited, and contributed papers. The invited contributions were given by experts from the United States, Finland, Denmark, Germany and the United Kingdom. The majority of the contributed papers came from workers in the United Kingdom. The first day was devoted to tutorials. Professor Stephen Grossberg was a guest speaker on the first day giving a thorough introduction to his Adaptive Resonance Theory of neural networks. Subsequent tutorials on the first day covered dynamical systems and neural networks, realistic neural modelling, pattern recognition using neural networks, and a review of hardware for neural network simulations. The contributed papers, given on the second day, demonstrated the breadth of interests of workers in the field. They covered topics in pattern recognition, multi-layer feedforward neural networks, network dynamics, memory and learning. The ordering of the papers in this volume is as they were given at the meeting. On the final day talks were given by Professor Kohonen (on self organising maps), Professor Kurten (on the dynamics of random and structured nets) and Professor Cotterill (on modelling the visual cortex). Dr A. Mayes presented a paper on various models for amnesia. The editors have taken the opportunity to include a paper of their own which was not presented at the meeting.

Sommario

Invited Lecture.- Self-Organizing Cortical Networks for Distributed Hypothesis Testing and Recognition Learning.- Tutorials.- Dynamical Systems and Artificial Neural Networks.- Neural Modelling.- Self-Organising Neural Maps and their Applications.- Contributed Papers.- The Application of Topological Mapping in the Study of Human Cerebral Tumours.- Reliable Memory from Unreliable Components.- Possible Strategies for Using Sleep to Improve Episodic Memory in the Face of Overlap.- Curvature-Driven Smoothing in Backpropagation Neural Networks.- A Spontaneously Growing Network for Unsupervised Learning.- Virtual Connectivity Through Structural Dissipation; Parallel Distributed Computation with Local Connectivity.- Temporally Processing Neural Networks for Morse Code Recognition.- Dynamics of Binary Networks with Extended Time-Summation.- Training Strategies for Probabilistic RAMs.- Computer Simulations of Recurrent Neural Nets for Temporal Recognition Problems.- Invited Papers.- Learning Vector Quantisation and the Self Organising Map.- Nature of the Functional Loss in Amnesia: Possible Role for a Highly Structured Neural Network.- Activity Patterns in Cortical Minicolumns.- Dynamics and Memory in Random and Structured Neural Networks.- Additional Paper (not given at conference).- Coupled Excitable Cells.

Dettagli sul prodotto

Con la collaborazione di G Taylor (Editore), J G Taylor (Editore), L T Mannion (Editore), L T Mannion (Editore), C. L. T. Mannion (Editore), J. G. Taylor (Editore)
Editore Springer, Berlin
 
Lingue Inglese
Formato Tascabile
Pubblicazione 15.10.2013
 
EAN 9783540196501
ISBN 978-3-540-19650-1
Pagine 305
Dimensioni 165 mm x 242 mm x 20 mm
Peso 554 g
Illustrazioni XIII, 305 p. 8 illus.
Serie Perspectives in Neural Computing
Perspectives in Neural Computing
Categoria Scienze naturali, medicina, informatica, tecnica > Informatica, EDP > Informatica

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