Recently, knowledge graph embedding, which projects symbolic entities and relations into continuous vector space, has become a new, hot topic in artificial intelligence. This paper addresses a new issue of multiple relation semantics that a relation may have multiple meanings revealed by the entity pairs associated with the corresponding triples, and proposes a novel Gaussian mixture model for embedding, TransG. The new model can discover latent semantics for a relation and leverage a mixture of relation component vectors for embedding a fact triple. To the best of our knowledge, this is the first generative model for knowledge graph embedding, which is able to deal with multiple relation semantics. Extensive experiments show that the proposed model achieves substantial improvements against the state-of-the-art baselines.
翻译:最近,将象征实体和关系纳入连续矢量空间的知识图嵌入,已成为人工智能中一个新的热点话题。本文探讨一个多重关系语义的新问题,即一种关系可能具有与相应三重相联的实体对对等所揭示的多重含义,并提议了一个新的高斯混合嵌入模式,TransG。新模型可以发现一种关系的潜在语义,并利用一种关系组成部分矢量的混合来嵌入一个事实三重。据我们所知,这是第一个知识图嵌入的基因化模型,能够处理多重关系语义。广泛的实验表明,拟议的模型在最先进的基线上取得了重大改进。