Abstract

Reasoning with inconsistencies is an important issue for Semantic Web as imperfect information is unavoidable in real applications. For this, different paraconsistent approaches, due to their capacity to draw as nontrivial conclusions by tolerating inconsistencies, have been proposed to reason with inconsistent description logic knowledge bases. However, existing paraconsistent approaches are often criticized for being too skeptical. To this end, this paper presents a non-monotonic paraconsistent version of description logic reasoning, called minimally inconsistent reasoning, where inconsistencies tolerated in the reasoning are minimized so that more reasonable conclusions can be inferred. Some desirable properties are studied, which shows that the new semantics inherits advantages of both non-monotonic reasoning and paraconsistent reasoning. A complete and sound tableau-based algorithm, called multi-valued tableaux, is developed to capture the minimally inconsistent reasoning. In fact, the tableaux algorithm is designed, as a framework for multi-valued DL, to allow for different underlying paraconsistent semantics, with the mere difference in the clash conditions. Finally, the complexity of minimally inconsistent description logic reasoning is shown on the same level as the (classical) description logic reasoning.

Highlights

  • Description logics (DLs) [1] are a family of formal knowledge representation languages, the logic formalism originally for Frame-based systems and Semantic Networks, and recently for Web Ontology Language (OWL) in Semantic Web

  • We have proposed a framework for multi-valued paraconsistent DLs

  • The suitability of the framework and the minimally inconsistent DL is justified by several important properties

Read more

Summary

Introduction

Description logics (DLs) [1] are a family of formal knowledge representation languages, the logic formalism originally for Frame-based systems and Semantic Networks, and recently for Web Ontology Language (OWL) in Semantic Web. The first applies paraconsistent semantics to DLs to tolerate inconsistent knowledge, e.g., based on Belnap’s four-valued semantics [21, 23], Kleene’s three-valued semantics [5], a variant of Belnap’s four-valued semantics [19] which is the {_, ^, * } fragment of Nelson’s paraconsistent logic N4 [31], and Besnard & Hunter’s quasi-classical semantics [28, 30]. Existing non-monotonic DL systems still have limitations in inconsistency handling because their underlying logics have to be monotonic In other words, they can no longer work if the new knowledge contains inconsistency, as the second situation in the illustrative example above. We propose a new framework of tableaux called multi-valued tableaux as the proof systems for both multi-valued DLs and minimally inconsistent DL reasonings.

Description logics
Paraconsistent logic
Multi-valued description logic
Syntax and semantics of MVDL
Constructing four-valued DL and paradoxical DL in MVDL
Minimally inconsistent semantics
Properties of MIDL
Usage of MIDL
A practical example
Tableaux for MVDL and MIDL
Tableaux for MVDL
Tableaux for minimally inconsistent entailment problem
Related works
Conclusions and future works
Kamide N
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call