Beyond OWL 2 QL in OBDA: Rewritings and Approximations

Elena Botoeva, Diego Calvanese, Valerio Santarelli, Domenico Fabio Savo, Alessandro Solimando, and Guohui Xiao

Proc. of the 30th AAAI Conf. on Artificial Intelligence (AAAI 2016). 2016.

Ontology-based data access (OBDA) is a novel paradigm facilitating access to relational data, realized by linking data sources to an ontology by means of declarative mappings. DL-LiteR , which is the logic underpinning the W3C ontology language OWL 2 QL and the current language of choice for OBDA, has been designed with the goal of delegating query answering to the underlying database engine, and thus is restricted in expressive power. E.g., it does not allow one to express disjunctive information, and any form of recursion on the data. The aim of this paper is to overcome these limitations of DL-LiteR , and extend OBDA to more expressive ontology languages, while still leveraging the underlying relational technology for query answering. We achieve this by relying on two well-known mechanisms, namely conservative rewriting and approximation, but significantly extend their practical impact by bringing into the picture the mapping, an essential component of OBDA. Specifically, we develop techniques to rewrite OBDA specifications with an expressive ontology to "equivalent" ones with a DL-LiteR ontology, if possible, and to approximate them otherwise. We do so by exploiting the high expressive power of the mapping layer to capture part of the domain semantics of rich ontology languages. We have implemented our techniques in the prototype system OntoProx, making use of the state-of-the-art OBDA system Ontop and the query answering system Clipper, and we have shown their feasibility and effectiveness with experiments on synthetic and real-world data.

   title = "Beyond OWL 2 QL in OBDA: Rewritings and Approximations",
   year = "2016",
   author = "Elena Botoeva and Diego Calvanese and Valerio Santarelli and
Savo, Domenico Fabio and Alessandro Solimando and Guohui Xiao",
   booktitle = "Proc. of the 30th AAAI Conf. on Artificial Intelligence
(AAAI 2016)",
   pages = "921--928",
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