基于语义数据挖掘的知识图谱构建

Dina Sharafeldeen, Alsayed Algergawy, B. König-Ries
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引用次数: 5

摘要

在过去的几年里,为新领域构建知识图谱并将其与现有领域联系起来受到了极大的关注,特别是在生物多样性研究等可用数据急剧增加的领域。为此,本文提出了一种基于语义数据挖掘的生物多样性知识图谱(半)自动生成方法。该方法利用并链接了来自多个生物多样性相关资源的信息,包括生命百科全书(EOL)、全球生物多样性信息设施(GBIF)和全球生物相互作用(GLOBI)。特别是,我们采用数据挖掘技术来提取支持初始物种相互作用知识图构建的关联规则。然后利用现有的生物多样性资源来丰富知识图谱。我们相信该图表将支持生物多样性领域的科学家获得新的见解,并丰富数据互操作性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Knowledge Graph Construction using Semantic Data Mining
Over the last few years, constructing knowledge graphs for new domains and linking them to existing ones has gained significant attention, especially in domains which have experienced a tremendous increase in available data such as biodiversity research. To this end, in this paper, we introduce a new semantic data mining-based approach to support the (semi-)automatic generation of a biodiversity knowledge graph. The proposed approach exploits and links information from several biodiversity-related resources, including the Encyclopedia of Life (EOL), the Global Biodiversity Information Facility (GBIF), and the Global Biotic Interactions (GLOBI). In particular, we adopt a data mining technique to extract association rules that support the construction of an initial species interactions knowledge graph. We then make use of available biodiversity resources to enrich the knowledge graph. We believe that this graph will support scientists from the biodiversity domain to gain new insights and enrich the data interoperability.
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