Skip to main content
Unpublished Paper
Context-Aware Semantic Association Ranking
Kno.e.sis Publications
  • Boanerges Aleman-Meza
  • Chris Halaschek
  • I. Budak Arpinar
  • Amit P. Sheth, Wright State University - Main Campus
Document Type
Report
Publication Date
8-21-2003
Abstract

Discovering complex and meaningful relationships, which we call Semantic Associations, is an important challenge. Just as ranking of documents is a critical component of today's search engines, ranking of relationships will be essential in tomorrow's semantic search engines that would support discovery and mining of the Semantic Web. Building upon our recent work on specifying types of Semantic Associations in RDF graphs, which are possible to create through semantic metadata extraction and annotation, we discuss a framework where ranking techniques can be used to identify more interesting and more relevant Semantic Associations. Our techniques utilize alternative ways of specifying the context using ontology. This enables capturing users' interests more precisely and better quality results in relevance ranking.

Comments

University of Georgia LSDIS Lab Technical Report 03-010

Citation Information
Boanerges Aleman-Meza, Chris Halaschek, I. Budak Arpinar and Amit P. Sheth. "Context-Aware Semantic Association Ranking" (2003)
Available at: http://works.bepress.com/amit_sheth/517/