Knowledge Representation (KR) and facet-analytical Knowledge Organization (KO) have been the two most prominent methodologies of data and knowledge modelling in the Artificial Intelligence community and the Information Science community, respectively. KR boasts of a robust and scalable ecosystem of technologies to support knowledge modelling while, often, underemphasizing the quality of its models (and model-based data). KO, on the other hand, is less technology-driven but has developed a robust framework of guiding principles (canons) for ensuring modelling (and model-based data) quality. This paper elucidates both the KR and facet-analytical KO methodologies in detail and provides a functional mapping between them. Out of the mapping, the paper proposes an integrated KO-enriched KR methodology with all the standard components of a KR methodology plus the guiding canons of modelling quality provided by KO. The practical benefits of the methodological integration has been exemplified t...

From Knowledge Representation to Knowledge Organization and Back / Giunchiglia, Fausto; Bagchi, Mayukh. - 71:1(2024), pp. 270-287. ( 19th International Conference on Wisdom, Well-Being, Win-Win, iConference 2024 Changchun, China April 22 - 26, 2024) [10.1007/978-3-031-57850-2_20].

From Knowledge Representation to Knowledge Organization and Back

Giunchiglia, Fausto;Bagchi, Mayukh
2024-01-01

Abstract

Knowledge Representation (KR) and facet-analytical Knowledge Organization (KO) have been the two most prominent methodologies of data and knowledge modelling in the Artificial Intelligence community and the Information Science community, respectively. KR boasts of a robust and scalable ecosystem of technologies to support knowledge modelling while, often, underemphasizing the quality of its models (and model-based data). KO, on the other hand, is less technology-driven but has developed a robust framework of guiding principles (canons) for ensuring modelling (and model-based data) quality. This paper elucidates both the KR and facet-analytical KO methodologies in detail and provides a functional mapping between them. Out of the mapping, the paper proposes an integrated KO-enriched KR methodology with all the standard components of a KR methodology plus the guiding canons of modelling quality provided by KO. The practical benefits of the methodological integration has been exemplified t...
2024
Proceedings of the International Conference on Information (iConference) 2024 - Wisdom, Well-Being, Win-Win
Switzerland.
Springer Nature
9783031578496
Giunchiglia, Fausto; Bagchi, Mayukh
From Knowledge Representation to Knowledge Organization and Back / Giunchiglia, Fausto; Bagchi, Mayukh. - 71:1(2024), pp. 270-287. ( 19th International Conference on Wisdom, Well-Being, Win-Win, iConference 2024 Changchun, China April 22 - 26, 2024) [10.1007/978-3-031-57850-2_20].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11572/401249
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