摘要
As the research of knowledge graph(KG)is deepened and widely used,knowledge graph com-pletion(KGC)has attracted more and more attentions from researchers,especially in scenarios of in-telligent search,social networks and deep question and answer(Q&A).Current research mainly fo-cuses on the completion of static knowledge graphs,and the temporal information in temporal knowl-edge graphs(TKGs)is ignored.However,the temporal information is definitely very helpful for the completion.Note that existing researches on temporal knowledge graph completion are difficult to process temporal information and to integrate entities,relations and time well.In this work,a rotation and scaling(RotatS)model is proposed,which learns rotation and scaling transformations from head entity embedding to tail entity embedding in 3D spaces to capture the information of time and rela-tions in the temporal knowledge graph.The performance of the proposed RotatS model have been evaluated by comparison with several baselines under similar experimental conditions and space com-plexity on four typical knowl good graph completion datasets publicly available online.The study shows that RotatS can achieve good results in terms of prediction accuracy.
作者
余泳
CHEN Shudong
TONG Da
QI Donglin
PENG Fei
ZHAO Hua
YU Yong;CHEN Shudong;TONG Da;QI Donglin;PENG Fei;ZHAO Hua(Institute of Microelectronics,Chinese Academy of Sciences,Beijing 100191,P.R.China;University of Chinese Academy of Sciences,Beijing 100191,P.R.China;Beijing Institute of Tracking and Telecommunications Technology,Beijing 100191,P.R.China)
基金
the National Natural Science Foundation of China(No.6187022153).