Discovery of Class Relations in Exception Structured Knowledge Bases
2000
Knowledge-based systems (KBS) are not necessarily based on a well-defined ontologies. In particular it is possible to build very successful KBS for classification problems, but where the classes or conclusions are entered by experts as free-text sentences with little constraint on textual consistency and little systematic organisation of the conclusions. This paper investigates how relations between such ‘classes’ may be discovered from existing knowledge bases. We have based our approach on KBS built with Ripple Down Rules (RDR). RDR is a knowledge acquisition and knowledge maintenance method which allows KBS to be built very rapidly and simply by correcting errors, but does not require a strong ontology. Our experimental results are based on a large real-world medical RDR KBS. The motivation for our work is to allow an ontology in a KBS to ‘emerge’ during development, rather than requiring the ontology to be established prior to the development of the KBS. It follows earlier work on using Formal Concept Analysis (FCA) to discover ontologies in RDR KBS.
Keywords:
- Knowledge base
- Knowledge acquisition
- Knowledge-based systems
- Formal concept analysis
- Knowledge representation and reasoning
- Ontology (information science)
- Computer science
- Ripple-down rules
- Ontology
- Knowledge management
- Data mining
- Artificial intelligence
- Distributed computing
- knowledge maintenance
- Natural language processing
- Correction
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