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A Clustering Based Approach for Type Discovery in RDF Data Sources
In EGC 2015, vol. RNTI-E-28, pp.471-472
Abstract
RDF(S)/OWL data sources are not organized according to a predefined schema, as they are structureless by nature. This lack of schema limits their use to express queries or to understand their content. Our work is a contribution towards the inference of the structure of RDF(S)/OWL data sources. We present an approach relying on density-based clustering to discover the types describing the entities of possibly incomplete and noisy data sets.