Genetic algorithms for machine learning

書誌事項

Genetic algorithms for machine learning

edited by John J. Grefenstette

Kluwer Academic Publishers, c1994

Second printing

統一タイトル

Machine learning. Special issue

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注記

"A Special issue of Machine learning."

"Reprinted from Machine learning, vol. 13, nos. 2-3 (1993)."

Includes bibliographical references and index

内容説明・目次

内容説明

The articles presented here were selected from preliminary versions presented at the International Conference on Genetic Algorithms in June 1991, as well as at a special Workshop on Genetic Algorithms for Machine Learning at the same Conference. Genetic algorithms are general-purpose search algorithms that use principles inspired by natural population genetics to evolve solutions to problems. The basic idea is to maintain a population of knowledge structure that represent candidate solutions to the problem of interest. The population evolves over time through a process of competition (i.e. survival of the fittest) and controlled variation (i.e. recombination and mutation). Genetic Algorithms for Machine Learning contains articles on three topics that have not been the focus of many previous articles on GAs, namely concept learning from examples, reinforcement learning for control, and theoretical analysis of GAs. It is hoped that this sample will serve to broaden the acquaintance of the general machine learning community with the major areas of work on GAs. The articles in this book address a number of central issues in applying GAs to machine learning problems. For example, the choice of appropriate representation and the corresponding set of genetic learning operators is an important set of decisions facing a user of a genetic algorithm. The study of genetic algorithms is proceeding at a robust pace. If experimental progress and theoretical understanding continue to evolve as expected, genetic algorithms will continue to provide a distinctive approach to machine learning. Genetic Algorithms for Machine Learning is an edited volume of original research made up of invited contributions by leading researchers.

目次

  • Introduction
  • J.J. Grefenstette. Using Genetic Algorithms for Concept Learning
  • K.A. De Jong, W.M. Spears, D.F. Gordon. A Knowledge-Intensive Genetic Algorithm for Supervised Learning
  • C.Z. Janikow. Competition-Based Induction of Decision Models from Examples
  • D.P. Greene, S.F. Smith. Genetic Reinforcement Learning for Neurocontrol Problems
  • D. Whitely, S. Dominic, R. Das, C.W. Anderson. What Makes a Problem Hard for a Genetic Algorithm? Some Anomalous Results and Their Explanation
  • S. Forrest, M. Mitchell. Subject Index.

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詳細情報

  • NII書誌ID(NCID)
    BA26786164
  • ISBN
    • 0792394070
  • LCCN
    93034282
  • 出版国コード
    us
  • タイトル言語コード
    eng
  • 本文言語コード
    eng
  • 出版地
    Boston
  • ページ数/冊数
    166 p.
  • 大きさ
    25 cm
  • 分類
  • 件名
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