In this paper we generalize single-relation pseudo-Riemannian graph embedding models to multi-relational networks, and show that the typical approach of encoding relations as manifold transformations translates from the Riemannian to the pseudo-Riemannian case. In addition we construct a view of relations as separate spacetime submanifolds of multi-time manifolds, and consider an interpolation between a pseudo-Riemannian embedding model and its Wick-rotated Riemannian counterpart. We validate these extensions in the task of link prediction, focusing on flat Lorentzian manifolds, and demonstrate their use in both knowledge graph completion and knowledge discovery in a biological domain.
翻译:在本文中,我们将单一关系假里曼尼图模型嵌入多关系网络,并表明典型的编码关系模式作为多重转换的典型方法从Riemannian转换到伪里曼尼案例。此外,我们构筑了一种将关系视为多时间多元体的单独时空子体的视角,并考虑假里曼尼嵌入模型与其Wick-rotated Riemannian对应方之间的插图。我们在连接预测任务中验证了这些延伸,重点是平坦的洛伦茨元体,并展示了它们在生物领域知识图完成和知识发现中的用途。