Affiliations: Department of Mathematics and Computer Science, University of Catania, Viale Andrea Doria, Catania, Italy
Correspondence:
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Corresponding author: Carmelo Fabio Longo, Department of Mathematics and Computer Science, University of Catania, Viale Andrea Doria, 6, 95125 Catania, Italy. E-mail: [email protected].
Note: [¶] This work is an extended version of the paper [1] presented at the 22nd Workshop “From Objects to Agents” (WOA 2021), Bologna, Italy, September 1-3, 2021.
Abstract: The interoperability of devices from distinct brands on the Internet of Things (IoT) domain is still an open issue. The main reason is that pioneer companies always deliberately neglected to deploy devices able to interoperate with competitors products. The key factors that may invert such a trend derive, on one hand, from the abstraction of communication protocols that facilitates the migration from vertical to horizontal paradigms and, on the other hand, from the introduction of common and shared ontologies encoding devices specifications. The Semantic Web, with all its layers, can be considered the main framework for delivering ontologies, and by virtue of its features, it is surely the ideal means for providing shared knowledge. In this paper we present a framework that instantiates cognitive agents operating in IoT context, endowed with meta-reasoning in the Semantic Web. The framework, called SW-Caspar, is also provided with a module that performs semi-automatic ontology learning from sentences expressed in natural language; such a learning process generates a conceptual space reflecting the domain of discourse with an instance of a novel foundational ontology called Linguistic Oriented Davidsonian Ontology (LODO), whose main feature is to increase the deepness of reasoning without compromising linguistic-related features. LODO is inspired by the First-Order Logic Davidsonian notation and is serialized in OWL 2. Well-known examples derived from the theory of logical reasoning and a case-study applied to automation on health scenarios are also provided.
Keywords: Cognitive Architecture, Natural
Language Processing, Artificial Intelligence, Semantic
Web, Internet of Things, Ontology Learning, Computational
Linguistic