The recently introduced series of description logics under the common moniker
DL-Lite has attracted attention of the description logic and semantic web
communities due to the low computational complexity of inference, on the one
hand, and the ability to represent conceptual modeling formalisms, on the
other. The main aim of this article is to carry out a thorough and systematic
investigation of inference in extensions of the original DL-Lite logics along
five axes: by (i) adding the Boolean connectives and (ii) number restrictions
to concept constructs, (iii) allowing role hierarchies, (iv) allowing role
disjointness, symmetry, asymmetry, reflexivity, irreflexivity and transitivity
constraints, and (v) adopting or dropping the unique same assumption. We
analyze the combined complexity of satisfiability for the resulting logics, as
well as the data complexity of instance checking and answering positive
existential queries. Our approach is based on embedding DL-Lite logics in
suitable fragments of the one-variable first-order logic, which provides useful
insights into their properties and, in particular, computational behavior
Abstract. We present Ontop, an open-source Ontology-Based Data Access (OBDA) system that allows for querying relational data sources through a conceptual representation of the domain of interest, provided in terms of an ontology, to which the data sources are mapped. Key features of Ontop are its solid theoretical foundations, a virtual approach to OBDA, which avoids materializing triples and is implemented through the query rewriting technique, extensive optimizations exploiting all elements of the OBDA architecture, its compliance to all relevant W3C recommendations (including SPARQL queries, R2RML mappings, and OWL 2 QL and RDFS ontologies), and its support for all major relational databases.
Abstract. We present the architecture and technologies underpinning the OBDA system Ontop and taking full advantage of storing data in relational databases. We discuss the theoretical foundations of Ontop: the tree-witness query rewriting, T -mappings and optimisations based on database integrity constraints and SQL features. We analyse the performance of Ontop in a series of experiments and demonstrate that, for standard ontologies, queries and data stored in relational databases, Ontop is fast, efficient and produces SQL rewritings of high quality.
We present the framework of ontology-based data access, a semantic paradigm for providing a convenient and user-friendly access to data repositories, which has been actively developed and studied in the past decade. Focusing on relational data sources, we discuss the main ingredients of ontology-based data access, key theoretical results, techniques, applications and future challenges.
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