ReConRank: A Scalable Ranking Method for Semantic Web Data with Context
Arrow@dit (Dublin Institute of Technology)2006
Citations Over Time
Abstract
We present an approach that adapts the well-known PageRank/HITS algorithms to Semantic Web data. Our method combines ranks from the RDF graph with ranks from the context graph, i.e. data sources and their linkage. We present performance evaluation results based on a large RDF data set obtained from the Web.
Related Papers
- The PageRank Citation Ranking : Bringing Order to the Web(1999)
- → Authoritative sources in a hyperlinked environment(1999)8,990 cited
- → Swoogle(2004)815 cited
- → Finding and Ranking Knowledge on the Semantic Web(2005)237 cited
- → TripleRank: Ranking Semantic Web Data by Tensor Decomposition(2009)206 cited