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Approximate SPARQL for error tolerant queries on the DBpedia knowledge base | IEEE Conference Publication | IEEE Xplore

Approximate SPARQL for error tolerant queries on the DBpedia knowledge base


Abstract:

The Resource Description Framework (RDF), a language for describing resources, is being used more commonly in information fusion systems. SPARQL is a standard query langu...Show More

Abstract:

The Resource Description Framework (RDF), a language for describing resources, is being used more commonly in information fusion systems. SPARQL is a standard query language that enables knowledge extraction from data encoded in RDF. A SPARQL query is, in essence, an exact subgraph matching problem. Unfortunately, many of the techniques that produce data in RDF (such as manual data entry, social network analysis, natural language processing, etc.) make annotation mistakes, which result in dirty RDF data. SPARQL performs suboptimally on RDF data containing errors since, as an exact graph matching tool, it is not designed to cope with noisy data. To improve knowledge extraction under these conditions, we propose an extension to SPARQL that permits approximate graph matches. This allows queries to cope with errors in the RDF graph, both on the attribute level (such as misspelled names) as well as on the structural level (missing or extra edges). We use the TruST heuristic algorithm to solve the underlying approximate graph matching problem and demonstrate the benefit it brings to answering questions on the DBpedia knowledge base.
Date of Conference: 09-12 July 2013
Date Added to IEEE Xplore: 21 October 2013
ISBN Information:
Conference Location: Istanbul, Turkey

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