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Machine Learning - EWSL-91 European Working Session on Learning, Porto, Portugal, March 6-8, 1991. Proceedings (Lecture Notes in Computer Science / Lecture Notes in Artificial Intelligence) by Yves Kodratoff

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  • 82 Currently reading

Published by Springer .
Written in English

Subjects:

  • Machine learning,
  • Computers - General Information,
  • Europe,
  • Artificial Intelligence - General,
  • Programming - Software Development,
  • Computers / Artificial Intelligence,
  • Logic Programming,
  • Maschinenlernen,
  • Multi-strategy Learning,
  • Programmierung,
  • Software Engineering,
  • Software Entwicklung

Book details:

The Physical Object
FormatPaperback
Number of Pages537
ID Numbers
Open LibraryOL9060596M
ISBN 10354053816X
ISBN 109783540538165

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Case-based learning of strategic knowledge.- Learning in distributed systems and multi-agent environments.- Learning to relate terms in a multiple agent environment.- Extending learning to multiple agents: Issues and a model for multi-agent machine learning (MA-ML).- Applications of machine learning: Notes from the panel members Machine Learning — EWSL European Working Session on Learning Porto, Portugal, March 6–8, Proceedings A. Giordana, D. Roverso, L. Saitta (auth.), Yves Kodratoff (eds.) This book contains the proceedings of the 5th European Working Session on Learning (EWSL), which describes the most recent advances in the field, especially.   Get this from a library! Machine learning: EWSL European working session on learning, Porto, Portugal, March , proceedings. [Yves Kodratoff;]. Books; SIGs; Conferences; People; More. Search ACM Digital Library. Search Proceedings of the European working session on learning on Machine learning March Pages – 61 citation; 0; Downloads. Metrics. Total Citations Total Downloads 0. Last 12 Months 0. EWSL Proceedings of the European working session on learning.

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