Autonomous Learning from the Environment

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  • Autonomous Learning from the Environment Book Detail

  • Author : Wei-Min Shen
  • Release Date : 1994
  • Publisher : Computer Science Press, Incorporated
  • Genre : Artificial intelligence
  • Pages : 355
  • ISBN 13 : 9780716782650
  • File Size : 95,95 MB

Autonomous Learning from the Environment by Wei-Min Shen PDF Summary

Book Description: A significant contribution to the scientific foundation of autonomous learning systems, this book contains clear, up-to-date coverage of three basic subtasks: active model abstraction, model application, and integration. It is the only textbook to offer a thorough discussion of active model abstraction.

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