The Landscape of Ontology Reuse Approaches
November 25, 2020 Β· Declared Dead Β· π Applications and Practices in Ontology Design, Extraction, and Reasoning
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Authors
Valentina Anita Carriero, Marilena Daquino, Aldo Gangemi, Andrea Giovanni Nuzzolese, Silvio Peroni, Valentina Presutti, Francesca Tomasi
arXiv ID
2011.12599
Category
cs.AI: Artificial Intelligence
Citations
38
Venue
Applications and Practices in Ontology Design, Extraction, and Reasoning
Last Checked
4 months ago
Abstract
Ontology reuse aims to foster interoperability and facilitate knowledge reuse. Several approaches are typically evaluated by ontology engineers when bootstrapping a new project. However, current practices are often motivated by subjective, case-by-case decisions, which hamper the definition of a recommended behaviour. In this chapter we argue that to date there are no effective solutions for supporting developers' decision-making process when deciding on an ontology reuse strategy. The objective is twofold: (i) to survey current approaches to ontology reuse, presenting motivations, strategies, benefits and limits, and (ii) to analyse two representative approaches and discuss their merits.
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