Logical Inferences with Contexts of RDF Triples
Vinh Nguyen, Amit Sheth

TL;DR
This paper introduces a formal inference mechanism that incorporates RDF triple contexts into the Semantic Web, enabling the derivation of new contextual triples with demonstrated scalability on large knowledge bases.
Contribution
It presents the first formal semantics and inference rules for RDF triples with context, allowing context to be treated as first-class citizens in logical reasoning.
Findings
The proposed mechanism is formalized within model-theoretic semantics.
The inference rules can derive new contextual triples about triples.
The implementation scales efficiently on large datasets, adding minimal time overhead.
Abstract
Logical inference, an integral feature of the Semantic Web, is the process of deriving new triples by applying entailment rules on knowledge bases. The entailment rules are determined by the model-theoretic semantics. Incorporating context of an RDF triple (e.g., provenance, time, and location) into the inferencing process requires the formal semantics to be capable of describing the context of RDF triples also in the form of triples, or in other words, RDF contextual triples about triples. The formal semantics should also provide the rules that could entail new contextual triples about triples. In this paper, we propose the first inferencing mechanism that allows context of RDF triples, represented in the form of RDF triples about triples, to be the first-class citizens in the model-theoretic semantics and in the logical rules. Our inference mechanism is well-formalized with all new…
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Taxonomy
TopicsSemantic Web and Ontologies · Biomedical Text Mining and Ontologies · Scientific Computing and Data Management
