Towards a Domain Ontology for the Analysis of Ancient Fabrics The
SILKNOW Project and the Case of European Silk Heritage
- URL: http://arxiv.org/abs/2112.15341v1
- Date: Fri, 31 Dec 2021 08:02:06 GMT
- Title: Towards a Domain Ontology for the Analysis of Ancient Fabrics The
SILKNOW Project and the Case of European Silk Heritage
- Authors: Marie Puren (MNSHS, CJM), Pierre Vernus (LARHRA, LARHRA ARHN, UL2)
- Abstract summary: SILKNOW project aims to give greater visibility to silk objects produced and consumed in Europe between the 15th and 19th centuries.
We present the methodology used to develop a knowledge graph, and in particular the different steps that were necessary to create the underlying data model.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this article, we present the SILKNOW project (Silk heritage in the
Knowledge Society: from punched card to Big Data, Deep Learning and
visual/tangible simulations) (2018-2021). This project aimed to use Semantic
Web technologies to give greater visibility to silk objects produced and
consumed in Europe between the 15th and 19th centuries. Silk is a particularly
important material in European history, and it has produced some exceptional
objects of great historical interest. However, it is a threatened heritage that
is little known to the general public. We show the interest of using Semantic
Web technologies to give more visibility to such a heritage, by describing the
results we have obtained. We present the methodology used to develop a
knowledge graph, and in particular the different steps that were necessary to
create the underlying data model, based on the CIDOC CRM or CIDOC Conceptual
Reference Model. We also propose a CIDOC CRM-compatible extension to express
the complex semantics of the creation and production process of ancient silk
fabrics.
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