Learning adaptation knowledge to improve case-based reasoning.

No === Case-Based Reasoning systems retrieve and reuse solutions for previously solved problems that have been encountered and remembered as cases. In some domains, particularly where the problem solving is a classification task, the retrieved solution can be reused directly. But for design tasks it...

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Main Authors: Craw, S., Wiratunga, N., Rowe, Raymond C.
Language:en
Published: 2009
Subjects:
Online Access:http://hdl.handle.net/10454/3931
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spelling ndltd-BRADFORD-oai-bradscholars.brad.ac.uk-10454-39312019-08-31T03:02:17Z Learning adaptation knowledge to improve case-based reasoning. Craw, S. Wiratunga, N. Rowe, Raymond C. Case-based reasoning Adaptation knowledge Knowledge acquisition Machine learning Introspective learning No Case-Based Reasoning systems retrieve and reuse solutions for previously solved problems that have been encountered and remembered as cases. In some domains, particularly where the problem solving is a classification task, the retrieved solution can be reused directly. But for design tasks it is common for the retrieved solution to be regarded as an initial solution that should be refined to reflect the differences between the new and retrieved problems. The acquisition of adaptation knowledge to achieve this refinement can be demanding, despite the fact that the knowledge source of stored cases captures a substantial part of the problem-solving expertise. This paper describes an introspective learning approach where the case knowledge itself provides a source from which training data for the adaptation task can be assembled. Different learning algorithms are explored and the effect of the learned adaptations is demonstrated for a demanding component-based pharmaceutical design task, tablet formulation. The evaluation highlights the incremental nature of adaptation as a further reasoning step after nearest-neighbour retrieval. A new property-based classification to adapt symbolic values is proposed, and an ensemble of these property-based adaptation classifiers has been particularly successful for the most difficult of the symbolic adaptation tasks in tablet formulation. 2009-11-16T14:46:58Z 2009-11-16T14:46:58Z 2006 Article No full-text available in the repository Craw, S., Wiratunga, N. and Rowe, R.C. (2006). Learning adaptation knowledge to improve case-based reasoning. Artificial Intelligence. Vol. 170, No. 16-17, pp. 1175-1192. http://hdl.handle.net/10454/3931 en http://dx.doi.org/10.1016/j.artint.2006.09.001
collection NDLTD
language en
sources NDLTD
topic Case-based reasoning
Adaptation knowledge
Knowledge acquisition
Machine learning
Introspective learning
spellingShingle Case-based reasoning
Adaptation knowledge
Knowledge acquisition
Machine learning
Introspective learning
Craw, S.
Wiratunga, N.
Rowe, Raymond C.
Learning adaptation knowledge to improve case-based reasoning.
description No === Case-Based Reasoning systems retrieve and reuse solutions for previously solved problems that have been encountered and remembered as cases. In some domains, particularly where the problem solving is a classification task, the retrieved solution can be reused directly. But for design tasks it is common for the retrieved solution to be regarded as an initial solution that should be refined to reflect the differences between the new and retrieved problems. The acquisition of adaptation knowledge to achieve this refinement can be demanding, despite the fact that the knowledge source of stored cases captures a substantial part of the problem-solving expertise. This paper describes an introspective learning approach where the case knowledge itself provides a source from which training data for the adaptation task can be assembled. Different learning algorithms are explored and the effect of the learned adaptations is demonstrated for a demanding component-based pharmaceutical design task, tablet formulation. The evaluation highlights the incremental nature of adaptation as a further reasoning step after nearest-neighbour retrieval. A new property-based classification to adapt symbolic values is proposed, and an ensemble of these property-based adaptation classifiers has been particularly successful for the most difficult of the symbolic adaptation tasks in tablet formulation.
author Craw, S.
Wiratunga, N.
Rowe, Raymond C.
author_facet Craw, S.
Wiratunga, N.
Rowe, Raymond C.
author_sort Craw, S.
title Learning adaptation knowledge to improve case-based reasoning.
title_short Learning adaptation knowledge to improve case-based reasoning.
title_full Learning adaptation knowledge to improve case-based reasoning.
title_fullStr Learning adaptation knowledge to improve case-based reasoning.
title_full_unstemmed Learning adaptation knowledge to improve case-based reasoning.
title_sort learning adaptation knowledge to improve case-based reasoning.
publishDate 2009
url http://hdl.handle.net/10454/3931
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AT wiratungan learningadaptationknowledgetoimprovecasebasedreasoning
AT roweraymondc learningadaptationknowledgetoimprovecasebasedreasoning
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