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Entity Alignment for Knowledge Graphs with Multi-order Convolutional Networks (Extended Abstract)

机译:具有多阶卷积网络的知识图形的实体对齐(扩展摘要)

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摘要

Knowledge graph (KG) entity alignment is the task of identifying corresponding entities across different KGs. Existing alignment techniques often require large amounts of labelled data, are unable to encode multi-modal data simultaneously, and enforce only a few consistency constraints. In this paper, we propose an end-to-end, unsupervised entity alignment framework for cross-lingual KGs using multi-order graph convolutional networks. An evaluation of our method using real-world datasets reveals that it consistently outperforms the state-of-the-art in terms of accuracy, efficiency, and label saving.
机译:知识图(kg)实体对齐是识别不同kgs的相应实体的任务。 现有的对齐技术通常需要大量的标记数据,无法同时编码多模态数据,并仅执行几个一致性约束。 在本文中,我们提出了一种使用多阶图卷积网络的交叉语言KG的端到端,无监督的实体对准框架。 使用现实数据集的方法评估我们的方法揭示了它在准确性,效率和节省标签方面始终如一地优于最先进的。

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