Learning embeddings of entities and relations existing in knowledge bases allows the discovery of hidden patterns in data. In this work, we examine the geometrical space's contribution to the task of knowledge base completion. We focus on the family of translational models, whose performance has been lagging, and propose a model, dubbed HyperKG, which exploits the hyperbolic space in order to better reflect the topological properties of knowledge bases. We investigate the type of regularities that our model can capture and we show that it is a prominent candidate for effectively representing a subset of Datalog rules. We empirically show, using a variety of link prediction datasets, that hyperbolic space allows to narrow down significantly the performance gap between translational and bilinear models.
翻译:在这项工作中,我们研究了几何空间对完成知识库任务的贡献。我们注重翻译模型的组合,其性能一直落后,并提出一个模型,称为HyperKG,该模型利用双曲空间更好地反映知识库的地形特性。我们调查了我们的模型能够捕捉的规律类型,并显示它是有效代表一组数据仪规则的突出候选方。我们用各种链接预测数据集的经验显示,双曲空间允许大幅缩小翻译和双线模型之间的性能差距。