Query-driven Procedures for Hybrid MKNF Knowledge Bases
Jos\'e J\'ulio Alferes, Matthias Knorr, Terrance Swift

TL;DR
This paper introduces a query-driven reasoning procedure for Hybrid MKNF knowledge bases that combines rule evaluation with ontology reasoning, maintaining polynomial data complexity for tractable description logics like EL+.
Contribution
It presents a sound and complete query-driven procedure for Hybrid MKNF, integrating an external oracle for ontology reasoning, applicable to lightweight DLs like EL+.
Findings
The procedure is sound and complete with respect to the WFS semantics.
It maintains polynomial data complexity when using the EL+ oracle.
The approach effectively combines rule evaluation with ontology reasoning.
Abstract
Hybrid MKNF knowledge bases are one of the most prominent tightly integrated combinations of open-world ontology languages with closed-world (non-monotonic) rule paradigms. The definition of Hybrid MKNF is parametric on the description logic (DL) underlying the ontology language, in the sense that non-monotonic rules can extend any decidable DL language. Two related semantics have been defined for Hybrid MKNF: one that is based on the Stable Model Semantics for logic programs and one on the Well-Founded Semantics (WFS). Under WFS, the definition of Hybrid MKNF relies on a bottom-up computation that has polynomial data complexity whenever the DL language is tractable. Here we define a general query-driven procedure for Hybrid MKNF that is sound with respect to the stable model-based semantics, and sound and complete with respect to its WFS variant. This procedure is able to answer a…
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Taxonomy
TopicsLogic, Reasoning, and Knowledge · Semantic Web and Ontologies · Advanced Database Systems and Queries
