DACHA: A Dual Graph Convolution Based Temporal Knowledge Graph Representation Learning Method Using Historical Relation

Ling Chen, Xing Tang, Weiqiu Chen, Y. Qian, Yansheng Li, Yongjun Zhang
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引用次数: 15

Abstract

Temporal knowledge graph (TKG) representation learning embeds relations and entities into a continuous low-dimensional vector space by incorporating temporal information. Latest studies mainly aim at learning entity representations by modeling entity interactions from the neighbor structure of the graph. However, the interactions of relations from the neighbor structure of the graph are neglected, which are also of significance for learning informative representations. In addition, there still lacks an effective historical relation encoder to model the multi-range temporal dependencies. In this article, we propose a dual graph convolution network based TKG representation learning method using historical relations (DACHA). Specifically, we first construct the primal graph according to historical relations, as well as the edge graph by regarding historical relations as nodes. Then, we employ the dual graph convolution network to capture the interactions of both entities and historical relations from the neighbor structure of the graph. In addition, the temporal self-attentive historical relation encoder is proposed to explicitly model both local and global temporal dependencies. Extensive experiments on two event based TKG datasets demonstrate that DACHA achieves the state-of-the-art results.
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DACHA:一种基于对偶图卷积的历史关系时态知识图表示学习方法
时态知识图(TKG)表示学习通过结合时态信息将关系和实体嵌入到连续的低维向量空间中。最新的研究主要是通过从图的邻居结构中建模实体交互来学习实体表示。然而,图的邻居结构中关系的相互作用被忽略了,这对学习信息表示也有重要意义。此外,还缺乏一种有效的历史关系编码器来对多范围时间依赖性进行建模。在本文中,我们提出了一种基于历史关系(DACHA)的对偶图卷积网络TKG表示学习方法。具体而言,我们首先根据历史关系构造原始图,并将历史关系作为节点构造边缘图。然后,我们利用对偶图卷积网络从图的邻居结构中捕获实体之间的相互作用和历史关系。此外,提出了时间自关注历史关系编码器,以显式地建模局部和全局时间依赖性。在两个基于事件的TKG数据集上进行的大量实验表明,DACHA达到了最先进的结果。
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