Case-Based Reasoning: Experiences, Lessons, and Future Directions

Case-Based Reasoning: Experiences, Lessons, and Future Directions

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Case-based reasoning (CBR) is a paradigm for reasoning and learning in artificial intelligence, with research efforts and applications extending the frontiers of the field. This book provides an introduction for students as well as an up-to-date overview for experienced researchers and practitioners. It examines the field in a "case-based" way, through concrete examples of how key issues - including indexing and retrieval, case adaptation, evaluation and application of CBR methods - are being addressed in the context of a range of tasks and domains. Complementing these case studies are commentaries by leading researchers on the lessons learned from experiences with CBR and visions for the roles in which case-based reasoning can have the greatest impact. A tutorial introduction by Janet Kolodner, one of the originators of CBR, and David Leake should make the book accessible to students and developers starting to apply case-based reasoning. The volume can also serve as a companion for a CBR or introductory AI textbook.

Author: David Leake (Indiana University)
Format: Paperback, 525 pages, 152mm x 229mm, 680 g
Published: 1996, MIT Press Ltd, United States
Genre: Computing: Professional & Programming

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Description
Case-based reasoning (CBR) is a paradigm for reasoning and learning in artificial intelligence, with research efforts and applications extending the frontiers of the field. This book provides an introduction for students as well as an up-to-date overview for experienced researchers and practitioners. It examines the field in a "case-based" way, through concrete examples of how key issues - including indexing and retrieval, case adaptation, evaluation and application of CBR methods - are being addressed in the context of a range of tasks and domains. Complementing these case studies are commentaries by leading researchers on the lessons learned from experiences with CBR and visions for the roles in which case-based reasoning can have the greatest impact. A tutorial introduction by Janet Kolodner, one of the originators of CBR, and David Leake should make the book accessible to students and developers starting to apply case-based reasoning. The volume can also serve as a companion for a CBR or introductory AI textbook.