论文标题
tero:通过时间旋转嵌入的时间感知知识图
TeRo: A Time-aware Knowledge Graph Embedding via Temporal Rotation
论文作者
论文摘要
在过去的几年中,知识图(kg)中实体关系和实体关系的学习表征引起了人们的兴趣。但是,最近的时间知识图(TKG)的最新可用性包含每个事实的时间信息,因此需要在此类TKG中加班。在这方面,我们提出了TKE嵌入的新方法Tero,该方法将嵌入实体嵌入的时间演变定义为从初始时间到当前时间的旋转。特别是,对于涉及时间间隔的事实,每个关系分别作为一对双重复合物嵌入,分别以处理开始的开始和结束。我们展示了我们提出的模型克服了现有的KG嵌入模型和TKG嵌入模型的局限性,并具有随着时间的推移而学习和推断的关系模式的能力。四个不同TKG的实验结果表明,Tero明显胜过链接预测的现有最新模型。此外,我们分析了时间粒度对TKG的链接预测的影响,据我们所知,这在先前的文献中没有研究过。
In the last few years, there has been a surge of interest in learning representations of entitiesand relations in knowledge graph (KG). However, the recent availability of temporal knowledgegraphs (TKGs) that contain time information for each fact created the need for reasoning overtime in such TKGs. In this regard, we present a new approach of TKG embedding, TeRo, which defines the temporal evolution of entity embedding as a rotation from the initial time to the currenttime in the complex vector space. Specially, for facts involving time intervals, each relation isrepresented as a pair of dual complex embeddings to handle the beginning and the end of therelation, respectively. We show our proposed model overcomes the limitations of the existing KG embedding models and TKG embedding models and has the ability of learning and inferringvarious relation patterns over time. Experimental results on four different TKGs show that TeRo significantly outperforms existing state-of-the-art models for link prediction. In addition, we analyze the effect of time granularity on link prediction over TKGs, which as far as we know hasnot been investigated in previous literature.