ICIC   25583
INSTITUTO DE CIENCIAS E INGENIERIA DE LA COMPUTACION
Unidad Ejecutora - UE
artículos
Título:
(AUTORES LISTADOS EN ORDEN ALFABETICO) Datalog+/- Ontology Consolidation
Autor/es:
CRISTHIAN ARIEL DAVID DEAGUSTINI; GUILLERMO R. SIMARI; MARIA VANINA MARTINEZ; MARCELO FALAPPA
Revista:
JOURNAL OF ARTIFICIAL INTELLIGENCE RESEARCH, THE
Editorial:
AI ACCESS FOUNDATION
Referencias:
Año: 2016 vol. 57 p. 613 - 656
ISSN:
1076-9757
Resumen:
Knowledge bases in the form of ontologies are receiving increasing attention as they allow to clearly represent both the available knowledge, which includes the knowledge in itself and the constraints imposed to it by the domain or the users. In particular, Datalog+/- ontologies are attractive because of their property of decidability and the possibility of dealing with the massive amounts of data in real world environments; however, as it is the case with many other ontological languages, their application in collaborative environments often lead to inconsistency related issues. In this paper we introduce the notion of incoherence regarding Datalog+/- ontologies, in terms of satisfiability of sets of constraints, and show how under specific conditions incoherence leads to inconsistent Datalog+/- ontologies. The main contribution of this work is a novel approach to restore both consistency and coherence in Datalog+/- ontologies. The proposed approach is based on kernel contraction and restoration is performed by the application of incision functions that select formulas todelete. Nevertheless, instead of working over minimal incoherent/inconsistent sets encountered in the ontologies, our operators produce incisions over non-minimal structures called clusters. We present a construction for consolidation operators, along with the properties expected to be satisfied by them. Finally, we establish the relation between the construction and the properties by means of a representation theorem. Although this proposal is presented for Datalog+/- ontologies consolidation, these operators can be applied to other types of ontological languages, such as Description Logics, making them apt to be used incollaborative environments like the Semantic Web.