HuTO: an Human Time Ontology for Semantic Web Applications
June 19, 2015 Β· Declared Dead Β· π JournΓ©es Francophones d'IngΓ©nierie des Connaissances
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Authors
Papa Fary Diallo, Olivier Corby, Isabelle Mirbel, Moussa Lo, Seydina M. Ndiaye
arXiv ID
1506.05969
Category
cs.AI: Artificial Intelligence
Citations
1
Venue
JournΓ©es Francophones d'IngΓ©nierie des Connaissances
Last Checked
4 months ago
Abstract
The temporal phenomena have many facets that are studied by different communities. In Semantic Web, large heterogeneous data are handled and produced. These data often have informal, semi-formal or formal temporal information which must be interpreted by software agents. In this paper we present Human Time Ontology (HuTO) an RDFS ontology to annotate and represent temporal data. A major contribution of HuTO is the modeling of non-convex intervals giving the ability to write queries for this kind of interval. HuTO also incorporates normalization and reasoning rules to explicit certain information. HuTO also proposes an approach which associates a temporal dimension to the knowledge base content. This facilitates information retrieval by considering or not the temporal aspect.
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