作者
Yingchun Shan, Chenyang Bu, Xiaojian Liu, Shengwei Ji, Lei Li
发表日期
2018/11/17
研讨会论文
2018 IEEE International Conference on Big Knowledge (ICBK)
页码范围
33-40
出版商
IEEE
简介
Knowledge graph embedding (KGE) can benefit a variety of downstream tasks, such as link prediction and relation extraction, and has therefore quickly gained much attention. However, most conventional embedding models assume that all triple facts share the same confidence without any noise, which is inappropriate. In fact, many noises and conflicts can be brought into a knowledge graph (KG) because of both the automatic construction process and data quality problems. Fortunately, the novel confidence-aware knowledge representation learning (CKRL) framework was proposed, to incorporate triple confidence into translation-based models for KGE. Though effective at detecting noises, with uniform negative sampling methods, and a harsh triple quality function, CKRL could easily cause zero loss problems and false detection issues. To address these problems, we introduce the concept of negative triple …
引用总数
201920202021202220232024258774
学术搜索中的文章
Y Shan, C Bu, X Liu, S Ji, L Li - 2018 IEEE International Conference on Big Knowledge …, 2018