Inferring Same-As Facts from Linked Data: An Iterative Import-by-Query Approach
Al-Bakri, Mustafa (University of Grenoble Alpes) | Atencia, Manuel (University of Grenoble Alpes) | Lalande, Steffen (Institut National de l’Audiovisuel) | Rousset, Marie-Christine (University of Grenoble Alpes)
In this paper we model the problem of data linkage in Linked Data as a reasoning problem on possibly decentralized data. We describe a novel import-by-query algorithm that alternates steps of sub-query rewriting and of tailored querying the Linked Data cloud in order to import data as specific as possible for inferring or contradicting given target same-as facts. Experiments conducted on a real-world dataset have demonstrated the feasibility of this approach and its usefulness in practice for data linkage and disambiguation.
Mar-6-2015