Rediscovering Ranganathan: A Prismatic View of His Life through the
Knowledge Graph Spectrum
- URL: http://arxiv.org/abs/2401.03343v2
- Date: Mon, 29 Jan 2024 11:07:29 GMT
- Title: Rediscovering Ranganathan: A Prismatic View of His Life through the
Knowledge Graph Spectrum
- Authors: B. Dutta and S. Arzoo
- Abstract summary: The present study puts forward a novel biographical knowledge graph (KG) on Prof. S. R. Ranganathan.
The KG was developed using a "facet-based methodology" at two levels: in the identification of the vital biographical aspects and the development of the ontological model.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The present study puts forward a novel biographical knowledge graph (KG) on
Prof. S. R. Ranganathan, one of the pioneering figures in the Library and
Information Science (LIS) domain. It has been found that most of the relevant
facts about Ranganathan exist in a variety of resources (e.g., books, essays,
journal articles, websites, blogs, etc.), offering information in a fragmented
and piecemeal way. With this dedicated KG (henceforth known as RKG), we hope to
furnish a 360-degree view of his life and achievements. To the best of our
knowledge, such a dedicated representation is unparalleled in its scope and
coverage: using state-of-the-art technology for anyone to openly access,
use/re-use, and contribute. Inspired by Ranganathan's theories and ideas, the
KG was developed using a "facet-based methodology" at two levels: in the
identification of the vital biographical aspects and the development of the
ontological model. Finally, with this study, we call for a community-driven
effort to enhance the KG and pay homage to the Father of Library Science on the
hundredth anniversary of his revitalizing the LIS domain through his enduring
participation.
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