We study the problem of approximating Description Logic (DL) ontologies specified in a source language LS in terms of a less expressive target language LT . This problem is getting very relevant in practice: e.g., approximation is often needed in ontology-based data access systems, which are able to deal with ontology languages of a limited expressiveness. We first provide a general, parametric, and semantically well-founded definition of maximal sound approximation of a DL ontology. Then, we present an algorithm that is able to effectively compute two different notions of maximal sound approximation according to the above parametric semantics when the source ontology language is OWL 2 and the target ontology language is OWL 2 QL. Finally, we experiment the above algorithm by computing the two OWL 2 QL approximations of a large set of existing OWL 2 ontologies. The experimental results allow us both to evaluate the effectiveness of the proposed notions of approximation and to compare the two different notions of approximation in real cases.
CITATION STYLE
Console, M., Mora, J., Rosati, R., Santarelli, V., & Savo, D. F. (2014). Effective computation of maximal sound approximations of description logic ontologies. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 8797, pp. 164–179). Springer Verlag. https://doi.org/10.1007/978-3-319-11915-1_11
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