Ke SunShuo YuCiyuan PengXiang LiMehdi NaseriparsaFeng Xia
In real-world scenarios, knowledge graphs remain incomplete and contain abnormal information, such as redundan-cies, contradictions, inconsistencies, misspellings, and abnormal values. These shortcomings in the knowledge graphs potentially affect service quality in many applications. Although many approaches are proposed to perform knowledge graph completion, they are incapable of handling the abnormal information of knowledge graphs. Therefore, to address the abnormal information issue for the knowledge graph completion task, we design a novel knowledge graph completion framework called ABET, which specially focuses on abnormal entities. ABET consists of two components: a) abnormal entity prediction and b) knowledge graph completion. Firstly, the prediction component automati-cally predicts the abnormal entities in knowledge graphs. Then, the completion component effectively captures the heterogeneous structural information and the high-order features of neighbours based on different relations. Experiments demonstrate that ABET is an effective knowledge graph completion framework, which has made significant improvements over baselines. We further verify that ABET is robust for knowledge graph completion task with abnormal entities. © 2022 IEEE.
Fuyuan ZhangChangkai YouXinyang LinCuichun ZhengYumeng ZhangJingbin Wang
Weihang ZhangOvidiu ŞerbanJiahao SunYike Guo
Kemas Rahmat Saleh WiharjaJeff Z. PanMartin J. KollingbaumYu Deng
Shuo YuYingbo WangZhitao WanYanming ShenQiang ZhangFeng Xia