학술논문

Self-optimising CBR retrieval
Document Type
Conference
Source
Proceedings 12th IEEE Internationals Conference on Tools with Artificial Intelligence. ICTAI 2000 Tools with artificial intelligence Tools with Artificial Intelligence, 2000. ICTAI 2000. Proceedings. 12th IEEE International Conference on. :376-383 2000
Subject
Computing and Processing
Knowledge acquisition
Powders
Costs
Expert systems
Problem-solving
Knowledge engineering
Indexing
Artificial intelligence
Information retrieval
Drugs
Language
ISSN
1082-3409
Abstract
One reason why Case-Based Reasoning (CBR) has become popular is because it reduces development cost compared to rule-based expert systems. Still, the knowledge engineering effort may be demanding. In this paper we present a tool which helps to reduce the knowledge acquisition effort for building a typical CBR retrieval stage consisting of a decision-tree index and similarity measure. We use genetic algorithms to determine the relevance/importance of case features and to find optimal retrieval parameters. The optimisation is done using the data contained in the case-base. Because no (or little) other knowledge is needed this results in a self-optimising CBR retrieval. To illustrate this we present how the tool has been applied to optimise retrieval for a tablet formulation problem.