Adaptation through Interpolation for Time-Critical Case-Based Reasoning

作者: N. Chatterjee , J. A. Campbell

DOI: 10.1007/3-540-58330-0_89

关键词:

摘要: The paper introduces and examines the relevance of notion “interpolation” between case features, to facilitate fast adaptation existing cases a current situation. When this situation is time-critical there not enough time for exhaustive comparison various aspects all stored cases, so it may be possible retrieve high-quality match problem within specified time-limit. Viewing imperfect as process interpolation (or set processes with different qualities interpolation) then gives robust novel perspective reasoning, well being equally relevant case-based reasoning (CBR) in general. Although interpolation-like techniques have been used some CBR systems, they previously treated explicitly from perspective.

参考文章(11)
William Mark, Ralph Barletta, Explanation-based indexing of cases national conference on artificial intelligence. pp. 541- 546 ,(1988)
Kristian Hammond, Tim Converse, Mitchell Marks, Learning from opportunities: storing and re-using execution-time optimizations national conference on artificial intelligence. pp. 536- 540 ,(1988)
Thomas R. Hinrichs, Janet L. Kolodner, The roles of adaptation in case-based design national conference on artificial intelligence. pp. 28- 33 ,(1991)
Peter Raulefs, Rajendra Dodhiawala, N. S. Sridharan, Cynthia Pickering, Real-time AI systems: a definition and an architecture international joint conference on artificial intelligence. pp. 256- 261 ,(1989)
John Wolstencroft, Restructuring, reminding and repair: what's missing from models of analogy Ai Communications. ,vol. 2, pp. 58- 71 ,(1989) , 10.3233/AIC-1989-2202
Janet L. Kolodner, An introduction to case-based reasoning Artificial Intelligence Review. ,vol. 6, pp. 3- 34 ,(1992) , 10.1007/BF00155578
Kristian J. Hammond, Explaining and repairing plans that fail Artificial Intelligence. ,vol. 45, pp. 173- 228 ,(1990) , 10.1016/0004-3702(90)90040-7
Carl W. De Boor, Samuel Daniel Conte, Elementary Numerical Analysis: An Algorithmic Approach ,(1980)
S. Kobayashi, K. Nakamura, Knowledge compilation and refinement for fault diagnosis IEEE Intelligent Systems. ,vol. 6, pp. 39- 46 ,(1991) , 10.1109/64.97790
James F. Allen, Towards a general theory of action and time Artificial Intelligence. ,vol. 23, pp. 123- 154 ,(1984) , 10.1016/0004-3702(84)90008-0