Class Granularity: How richly does your knowledge graph represent the real world?
- URL: http://arxiv.org/abs/2411.06385v1
- Date: Sun, 10 Nov 2024 07:57:39 GMT
- Title: Class Granularity: How richly does your knowledge graph represent the real world?
- Authors: Sumin Seo, Heeseon Cheon, Hyunho Kim,
- Abstract summary: We propose a new metric called Open Granularity, which measures how well a knowledge graph is structured in terms of how finely classes with unique characteristics are defined.
Furthermore, this research presents potential impact of Open Granularity in knowledge graph's on downstream tasks.
- Score: 0.27309692684728604
- License:
- Abstract: To effectively manage and utilize knowledge graphs, it is crucial to have metrics that can assess the quality of knowledge graphs from various perspectives. While there have been studies on knowledge graph quality metrics, there has been a lack of research on metrics that measure how richly ontologies, which form the backbone of knowledge graphs, are defined or the impact of richly defined ontologies. In this study, we propose a new metric called Class Granularity, which measures how well a knowledge graph is structured in terms of how finely classes with unique characteristics are defined. Furthermore, this research presents potential impact of Class Granularity in knowledge graph's on downstream tasks. In particular, we explore its influence on graph embedding and provide experimental results. Additionally, this research goes beyond traditional Linked Open Data comparison studies, which mainly focus on factors like scale and class distribution, by using Class Granularity to compare four different LOD sources.
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