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Link Prediction between Group Entities in Knowledge Graphs (Student Abstract)

机译:知识图中的组实体之间的链路预测(学生摘要)

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Link prediction in knowledge graphs (KGs) aims at predicting potential links between entities in KGs. Existing knowledge graph embedding (KGE) based methods represent individual entities and links in KGs as vectors in low-dimension space. However, these methods focus mainly on the link prediction of individual entities, yet neglect that between group entities, which exist widely in real-world KGs. In this paper. we propose a KGE based method, called GTransA, for link prediction between group entities in a heterogeneous network by integrating individual entity links into group entity links during prediction. Experiments show that GTransA decreases mean rank by 5.4%, compared to TransA.
机译:知识图中的链路预测(KGS)旨在预测KGS中实体之间的潜在链接。 基于现有的知识图形嵌入(KGE)的方法代表了单个实体和KG中的链接作为低维空间中的向量。 然而,这些方法主要关注各个实体的链接预测,但忽视了在群体实体之间,这些实体在现实世界KGs中存在广泛。 在本文中。 我们提出基于KGE的方法,称为GTRANSA,用于通过将各个实体链路集成到预测期间通过将各个实体链路集成到组实体链路中的基础实体之间的链路预测。 与转发相比,实验表明,Gtransa降低了5.4%的平均排名。

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