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Extensions of Generic DOL for Generic Ontology Design Patterns

2019-06-14 16:25:43
Mihai Codescu, Bernd Krieg-Brückner, Till Mossakowski

Abstract

Generic ontologies were introduced as an extension (Generic DOL) of the Distributed Ontology, Modeling and Specification Language, DOL, with the aim to provide a language for Generic Ontology Design Patterns. In this paper we present a number of new language constructs that increase the expressivity and the generality of Generic DOL, among them sequential and optional parameters, list parameters with recursion, and local sub-patterns. These are illustrated with non-trivial patterns: generic value sets and (nested) qualitatively graded relations, demonstrated as definitional building blocks in an application domain.

Abstract (translated)

URL

https://arxiv.org/abs/1906.06275

PDF

https://arxiv.org/pdf/1906.06275.pdf


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