Towards a Knowledge Graph for Teaching Knowledge Graphs
- URL: http://arxiv.org/abs/2411.01304v1
- Date: Sat, 02 Nov 2024 16:39:45 GMT
- Title: Towards a Knowledge Graph for Teaching Knowledge Graphs
- Authors: Eleni Ilkou, Ernesto Jiménez-Ruiz,
- Abstract summary: This poster paper describes the ongoing research project for the creation of a use-case-driven Knowledge Graph resource tailored to the needs of teaching education in Knowledge Graphs (KGs)
We gather resources related to KG courses from lectures offered by the Semantic Web community, with the help of the COST Action Distributed Knowledge Graphs and the interest group on KGs at The Alan Turing Institute.
Our goal is to create a resource-focused KG with multiple interconnected semantic layers that interlink topics, courses, and materials with each lecturer.
- Score: 2.59358872905719
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- Abstract: This poster paper describes the ongoing research project for the creation of a use-case-driven Knowledge Graph resource tailored to the needs of teaching education in Knowledge Graphs (KGs). We gather resources related to KG courses from lectures offered by the Semantic Web community, with the help of the COST Action Distributed Knowledge Graphs and the interest group on KGs at The Alan Turing Institute. Our goal is to create a resource-focused KG with multiple interconnected semantic layers that interlink topics, courses, and materials with each lecturer. Our approach formulates a domain KG in teaching and relates it with multiple Personal KGs created for the lecturers.
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