Case-based learning

書誌事項

Case-based learning

edited by Janet L. Kolodner

Kluwer Academic Publishers, c1993

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注記

"A Special issue of Machine learning."

"Reprinted from Machine learning, vol. 10, no. 3 (1993). [pp.195-363]"

Includes bibliographical references and index

内容説明・目次

内容説明

Case-based reasoning means reasoning based on remembering previous experiences. A reasoner using old experiences (cases) might use those cases to suggest solutions to problems, to point out potential problems with a solution being computed, to interpret a new situation and make predictions about what might happen, or to create arguments justifying some conclusion. A case-based reasoner solves new problems by remembering old situations and adapting their solutions. It interprets new situations by remembering old similar situations and comparing and contrasting the new one to old ones to see where it fits best. Case-based reasoning combines reasoning with learning. It spans the whole reasoning cycle. A situation is experienced. Old situations are used to understand it. Old situations are used to solve a problem (if there is one to be solved). Then the new situation is inserted into memory alongside the cases it used for reasoning, to be used another time. The key to this reasoning method, then, is remembering. Remembering has two parts: integrating cases or experiences into memory when they happen and recalling them in appropriate situations later on. The case-based reasoning community calls this related set of issues the indexing problem. In broad terms, it means finding in memory the experience closest to a new situation. In narrower terms, it can be described as a two-part problem: assigning indexes or labels to experiences when they are put into memory that describe the situations to which they are applicable, so that they can be recalled later; and at recall time, elaborating the new situation in enough detail so that the indexes it would have if it were in the memory are identified. Case-Based Learning is an edited volume of original research comprising invited contributions by leading workers. This work has also been published as a special issues of MACHINE LEARNING, Volume 10, No. 3.

目次

  • Introduction
  • J.L. Kolodner. Indexing, Elaboration and Refinement: Incremental Learning of Explanatory Cases
  • A. Ram. Derivational Analogy in PRODIGY: Automated Case Acquisition, Storage and Utilization
  • M.M. Veloso, J.G. Carbonell. Opportunism and Learning
  • K. Hammond, T. Converse, M. Marks, C.M. Seifert. Integrating Feature Extraction and Memory Search
  • C. Owens. Wastewater Treatment Systems from Case-Based Reasoning
  • S. Krovvidy, W.G. Wee. Subject Index.

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詳細情報

  • NII書誌ID(NCID)
    BA20427930
  • ISBN
    • 0792393430
  • LCCN
    93020470
  • 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
    169 p.
  • 大きさ
    25 cm
  • 分類
  • 件名
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