Knowledge graph completion (KGC) is one of the effective methods to identify new facts in knowledge graph. Except for a few methods based on graph network, most of KGC methods trend to be trained based on independent triples, while are difficult to take a full account of the information of global network connection contained in knowledge network. To address these issues, in this study, we propose a simple and effective Network-based Pre-training framework for knowledge graph completion (termed NetPeace), which takes into account the information of global network connection and local triple relationships in knowledge graph. Experiments show that in NetPeace framework, multiple KGC models yields consistent and significant improvements on benchmarks (e.g., 36.45% Hits@1 and 27.40% MRR improvements for TuckER on FB15k-237), especially dense knowledge graph. On the challenging low-resource task, NetPeace that benefits from the global features of KG achieves higher performance (104.03% MRR and 143.89% Hit@1 improvements at most) than original models.
翻译:知识图谱补全(KGC)是识别知识图谱中新事实的一种有效方法。除了一些基于图网络的方法外,大部分KGC方法趋向于基于独立的三元组进行训练,难以全面考虑知识网络中包含的全局网络连接信息。为解决这些问题,本研究提出了一种简单有效的基于网络预训练的知识图谱补全框架(称为 NetPeace),该框架考虑了知识图谱中的全局网络连接信息和本地三元组关系。实验证明,在网络平和的框架下,多个KGC模型在基准测试上都有了一致和显著的改进(例如,在FB15k-237上对于TuckER,Hit@1有36.45%的改进,MRR有27.40%的改进),特别是在密集型知识图谱下。在具有挑战性的低资源任务上,从全局特征中获益的NetPeace实现了更高的性能(最多可提高104.03%的MRR和143.89%的Hit@1)。