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Artificial neural networks ICANN "97 : 7th International Conference, Lausanne, Switzerland, October 8-10, 1997 : proceedings

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Published by Springer in Berlin, New York .
Written in

Subjects:

  • Neural networks (Computer science) -- Congresses.

Book details:

Edition Notes

Includes bibliographical references and index.

StatementWulfram Gerstner ... [et al.].
SeriesLecture notes in computer science ;, 1327
ContributionsGerstner, Wulfram., International Conference on Artificial Neural Networks (European Neural Network Society) (7th : 1997 : Lausanne, Switzerland)
Classifications
LC ClassificationsQA76.87 .A74335 1997
The Physical Object
Paginationxix, 1274 p. :
Number of Pages1274
ID Numbers
Open LibraryOL693924M
ISBN 103540636315
LC Control Number97041197

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