MODL: A Modular Ontology Design Library
April 10, 2019 Β· Declared Dead Β· π WOP@ISWC
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Authors
Cogan Shimizu, Quinn Hirt, Pascal Hitzler
arXiv ID
1904.05405
Category
cs.AI: Artificial Intelligence
Citations
45
Venue
WOP@ISWC
Last Checked
4 months ago
Abstract
Pattern-based, modular ontologies have several beneficial properties that lend themselves to FAIR data practices, especially as it pertains to Interoperability and Reusability. However, developing such ontologies has a high upfront cost, e.g. reusing a pattern is predicated upon being aware of its existence in the first place. Thus, to help overcome these barriers, we have developed MODL: a modular ontology design library. MODL is a curated collection of well-documented ontology design patterns, drawn from a wide variety of interdisciplinary use-cases. In this paper we present MODL as a resource, discuss its use, and provide some examples of its contents.
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