Publication details

Empirical Merging of Ontologies A Proposal of Universal Uncertainty Representation Framework

Authors

NOVÁČEK Vít SMRŽ Pavel

Year of publication 2006
Type Article in Proceedings
Conference The Semantic Web: Research and Applications (Lecture notes in Computer Science 4011 / 2006 - Proceedings of ESWC'06 - 3rd European Semantic Web Conference)
MU Faculty or unit

Faculty of Informatics

Citation
Web http://nlp.fi.muni.cz/projects/ole/pubs.html
Field Informatics
Keywords knowledge acquisition; ontology; uncertainty representation
Description The significance of uncertainty representation has become obvious in the Semantic Web community recently. This paper presents our research on uncertainty handling in automatically created ontologies. A new framework for uncertain information processing is proposed. The research is related to OLE (Ontology LEarning) --- a project aimed at bottom--up generation and merging of domain--specific ontologies. Formal systems that underlie the uncertainty representation are briefly introduced. We discuss the universal internal format of uncertain conceptual structures in OLE then and offer a utilisation example then. The proposed format serves as a basis for empirical improvement of initial knowledge acquisition methods as well as for general explicit inference tasks.
Related projects:

You are running an old browser version. We recommend updating your browser to its latest version.

More info