论文标题
费率:关系自适应翻译嵌入知识图完成
RatE: Relation-Adaptive Translating Embedding for Knowledge Graph Completion
论文作者
论文摘要
通过链接预测,已经提出了许多图形嵌入方法,以完成知识图的完成。其中,翻译嵌入方法享有轻质结构,高效率和出色的解释性的优势。特别是在扩展到复杂的矢量空间时,它们显示了处理各种关系模式的能力,包括对称,反对称,反转和组成。但是,复杂矢量空间中定义的先前翻译嵌入方法遇到了两个主要问题:1)代表模型的能力和建模能力受翻译功能的限制,并严格乘以两个复数数字; 2)嵌入由一对多关系引起的歧义并不能明确缓解。在本文中,我们提出了一个关系自适应的翻译功能,建立在复杂空间中的新型加权产品上,其中权重是可学习的,特定于关系的,并且独立于嵌入尺寸。翻译函数仅需要八个标量参数,每个关系可以提高表达能力并减轻嵌入歧义问题的嵌入。然后,基于该功能,我们提出了我们的关系自适应翻译嵌入方法(速率)方法以评分每个图三倍。此外,提出了一种新颖的负抽样方法来利用先验知识和自我逆转学习来有效优化。实验验证率在四个链接预测基准上实现了最先进的性能。
Many graph embedding approaches have been proposed for knowledge graph completion via link prediction. Among those, translating embedding approaches enjoy the advantages of light-weight structure, high efficiency and great interpretability. Especially when extended to complex vector space, they show the capability in handling various relation patterns including symmetry, antisymmetry, inversion and composition. However, previous translating embedding approaches defined in complex vector space suffer from two main issues: 1) representing and modeling capacities of the model are limited by the translation function with rigorous multiplication of two complex numbers; and 2) embedding ambiguity caused by one-to-many relations is not explicitly alleviated. In this paper, we propose a relation-adaptive translation function built upon a novel weighted product in complex space, where the weights are learnable, relation-specific and independent to embedding size. The translation function only requires eight more scalar parameters each relation, but improves expressive power and alleviates embedding ambiguity problem. Based on the function, we then present our Relation-adaptive translating Embedding (RatE) approach to score each graph triple. Moreover, a novel negative sampling method is proposed to utilize both prior knowledge and self-adversarial learning for effective optimization. Experiments verify RatE achieves state-of-the-art performance on four link prediction benchmarks.