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Algorithmic learning

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Published by Clarendon Press, Oxford University Press in Oxford, New York .
Written in English

Subjects:

  • Machine learning.,
  • Algorithms.

Book details:

Edition Notes

Includes bibliographical references (p. [421]-428) and index.

StatementAlan Hutchinson.
SeriesGraduate texts in computer science ;, 2
Classifications
LC ClassificationsQ325.5 .H88 1994
The Physical Object
Paginationxxvi, 434 p. :
Number of Pages434
ID Numbers
Open LibraryOL1419782M
ISBN 100198538480, 0198537662
LC Control Number93029815

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