Engineering and Learning of Adaptation Knowledge in Case-Based Reasoning

Amélie Cordier 1 Béatrice Fuchs 1 Alain Mille 1
1 SILEX - Supporting Interaction and Learning by Experience
LIRIS - Laboratoire d'InfoRmatique en Image et Systèmes d'information
Abstract : Case-based reasoning (CBR) uses various knowledge containers for problem solving: cases, domain, similarity, and adaptation knowledge. These various knowledge containers are characterised from the engineering and learning points of view. We focus on adaptation and similarity knowledge containers that are of first importance, difficult to acquire and to model at the design stage. These difficulties motivate the use of a learning process for refining these knowledge containers. We argue that in an adaptation guided retrieval approach, similarity and adaptation knowledge containers must be mixed. We rely on a formalisation of adaptation for highlighting several knowledge units to be learnt, i.e. dependencies and influences between problem and solution descriptors. Finally, we propose a learning scenario called active approach where the user plays a central role for achieving the learning steps.
Document type :
Conference papers
Complete list of metadatas

https://hal.archives-ouvertes.fr/hal-01583931
Contributor : Équipe Gestionnaire Des Publications Si Liris <>
Submitted on : Friday, September 8, 2017 - 10:08:23 AM
Last modification on : Tuesday, February 26, 2019 - 10:47:55 AM

Identifiers

  • HAL Id : hal-01583931, version 1

Citation

Amélie Cordier, Béatrice Fuchs, Alain Mille. Engineering and Learning of Adaptation Knowledge in Case-Based Reasoning. 15th International Conference on Knowledge Engineering and Knowledge Management EKAW'06, Oct 2006, Podebrady, Czech Republic, Czech Republic. pp.303-317. ⟨hal-01583931⟩

Share

Metrics

Record views

69