Research Article
Object-fuzzy concept network: An enrichment of ontologies in semantic information retrieval
Article first published online: 13 AUG 2008
DOI: 10.1002/asi.20945
© 2008 ASIS&T
Issue

Journal of the American Society for Information Science and Technology
Volume 59, Issue 13, pages 2171–2185, November 2008
Additional Information
How to Cite
Calegari, S. and Sanchez, E. (2008), Object-fuzzy concept network: An enrichment of ontologies in semantic information retrieval. Journal of the American Society for Information Science and Technology, 59: 2171–2185. doi: 10.1002/asi.20945
Publication History
- Issue published online: 27 OCT 2008
- Article first published online: 13 AUG 2008
- Manuscript Accepted: 11 JUL 2008
- Manuscript Revised: 2 JUN 2008
- Manuscript Received: 9 JAN 2008
- Abstract
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Abstract
This article shows how a fuzzy ontology-based approach can improve semantic documents retrieval. After formally defining a fuzzy ontology and a fuzzy knowledge base, a special type of new fuzzy relationship called (semantic) correlation, which links the concepts or entities in a fuzzy ontology, is discussed. These correlations, first assigned by experts, are updated after querying or when a document has been inserted into a database. Moreover, in order to define a dynamic knowledge of a domain adapting itself to the context, it is shown how to handle a tradeoff between the correct definition of an object, taken in the ontology structure, and the actual meaning assigned by individuals. The notion of a fuzzy concept network is extended, incorporating database objects so that entities and documents can similarly be represented in the network. Information retrieval (IR) algorithm, using an object-fuzzy concept network (O-FCN), is introduced and described. This algorithm allows us to derive a unique path among the entities involved in the query to obtain maxima semantic associations in the knowledge domain. Finally, the study has been validated by querying a database using fuzzy recall, fuzzy precision, and coefficient variant measures in the crisp and fuzzy cases.

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