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  URDF: Efficient Reasoning in Uncertain RDF Knowledge Bases with Soft and Hard Rules

Theobald, M., Sozio, M., Suchanek, F., & Nakashole, N.(2010). URDF: Efficient Reasoning in Uncertain RDF Knowledge Bases with Soft and Hard Rules (MPI-I-2010-5-002). Saarbrücken: Max-Planck-Institut für Informatik. Retrieved from http://domino.mpi-inf.mpg.de/internet/reports.nsf/NumberView/2010-5-002.

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Latex : {URDF}: Efficient Reasoning in Uncertain {RDF} Knowledge Bases with Soft and Hard Rules

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Theobald, Martin1, Author           
Sozio, Mauro1, Author           
Suchanek, Fabian1, Author           
Nakashole, Ndapandula1, Author           
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1Databases and Information Systems, MPI for Informatics, Max Planck Society, ou_24018              

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 Abstract: We present URDF, an efficient reasoning framework for graph-based, nonschematic RDF knowledge bases and SPARQL-like queries. URDF augments first-order reasoning by a combination of soft rules, with Datalog-style recursive implications, and hard rules, in the shape of mutually exclusive sets of facts. It incorporates the common possible worlds semantics with independent base facts as it is prevalent in most probabilistic database approaches, but also supports semantically more expressive, probabilistic first-order representations such as Markov Logic Networks. As knowledge extraction on theWeb often is an iterative (and inherently noisy) process, URDF explicitly targets the resolution of inconsistencies between the underlying RDF base facts and the inference rules. Core of our approach is a novel and efficient approximation algorithm for a generalized version of the Weighted MAX-SAT problem, allowing us to dynamically resolve such inconsistencies directly at query processing time. Our MAX-SAT algorithm has a worst-case running time of O(jCj jSj), where jCj and jSj denote the number of facts in grounded soft and hard rules, respectively, and it comes with tight approximation guarantees with respect to the shape of the rules and the distribution of confidences of facts they contain. Experiments over various benchmark settings confirm a high robustness and significantly improved runtime of our reasoning framework in comparison to state-of-the-art techniques for MCMC sampling such as MAP inference and MC-SAT. Keywords

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Language(s): eng - English
 Dates: 20102010
 Publication Status: Issued
 Pages: 48 p.
 Publishing info: Saarbrücken : Max-Planck-Institut für Informatik
 Table of Contents: -
 Rev. Type: -
 Identifiers: eDoc: 536366
URI: http://domino.mpi-inf.mpg.de/internet/reports.nsf/NumberView/2010-5-002
Other: Local-ID: C1256DBF005F876D-4F6C2407136ECAA6C125770E003634BE-urdf-tr-2010
Report Nr.: MPI-I-2010-5-002
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