An Incremental Method for Meaning Elicitation of a Domain Ontology

نویسندگان

  • Sonia Bergamaschi
  • Laura Po
  • Maurizio Vincini
  • Paolo Bouquet
  • Daniel Giacomuzzi
  • Francesco Guerra
چکیده

Internet has opened the access to an overwhelming amount of data, requiring the development of new applications to automatically recognize, process and manage information available in web sites or web-based applications. The standard Semantic Web architecture exploits ontologies to give a shared (and known) meaning to each web source elements. In this context, we developed MELIS (Meaning Elicitation and Lexical Integration System). MELIS couples the lexical annotation module of the MOMIS system with some components from CTXMATCH2.0, a tool for eliciting meaning from several types of schemas and match them. MELIS uses the MOMIS’ WNEditor and CTXMATCH2.0 to support two main tasks in the MOMIS ontology generation methodology: the source annotation process, i.e. the operation of associating an element of a lexical database to each source element, and the extraction of lexical relationships among elements of different data sources.

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تاریخ انتشار 2006