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Multiple Interaction Attention Model for Open-World Knowledge Graph Completion

机译:开放世界知识图表完成的多种交互关注模型

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Knowledge Graph Completion (KGC) aims at complementing missing relationships between entities in a Knowledge Graph (KG). While closed-world KGC approaches utilizing the knowledge within KG could only complement very limited number of missing relations, more and more approaches tend to get knowledge from open-world resources such as online encyclopedias and newswire corpus. For instance, a recent proposed open-world KGC model called ConMask learns embeddings of the entity's name and parts of its text-description to connect unseen entities to the KG. However, this model does not make full use of the rich feature information in the text descriptions, besides, the proposed relationship-dependent content masking method may easily miss to find the target-words. In this paper, we propose to use a Multiple Interaction Attention (MIA) mechanism to model the interactions between the head entity description, head entity name, the relationship name, and the candidate tail entity descriptions, to form the enriched representations. Our empirical study conducted on two real-world data collections shows that our approach achieves significant improvements comparing to state-of-the-art KGC methods.
机译:知识图表完成(KGC)旨在补充知识图中的实体之间的缺失关系。虽然利用KG内的知识的封闭式KGC方法只能补充非常有限的缺失关系,但越来越多的方法倾向于从开放世界资源等知识,如在线百科全书和新闻记语料库。例如,近期提出的开放式开放世界KGC型号名为Conmask,了解实体名称和其文本的部分的嵌入式,以将未经调用的实体连接到KG。但是,此模型不会在文本描述中充分利用丰富的功能信息,此外,所提出的关系依赖性内容屏蔽方法可能很容易错过找到目标词。在本文中,我们建议使用多个交互关注(MIA)机制来模拟头部实体描述,头实体名称,关系名称和候选尾部实体描述之间的交互,以形成丰富的表示。我们对两个现实世界的数据收集进行的实证研究表明,我们的方法实现了与最先进的KGC方法相比的显着改进。

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