Knowledge graphs store facts using relations between two entities. In this work, we address the question of link prediction in knowledge hypergraphs where relations are defined on any number of entities. While techniques exist (such as reification) that convert non-binary relations into binary ones, we show that current embedding-based methods for knowledge graph completion do not work well out of the box for knowledge graphs obtained through these techniques. To overcome this, we introduce HSimplE and HypE, two embedding-based methods that work directly with knowledge hypergraphs. In both models, the prediction is a function of the relation embedding, the entity embeddings and their corresponding positions in the relation. We also develop public datasets, benchmarks and baselines for hypergraph prediction and show experimentally that the proposed models are more effective than the baselines.
翻译:使用两个实体之间的关系存储知识图。 在这项工作中,我们处理知识高频系统中的链接预测问题,其中界定了任何实体的关系。虽然存在将非二进制关系转换成二进制关系的技术(如再化),但我们显示,目前基于嵌入的知识图完成方法在通过这些技术获得的知识图的框框中并不十分有效。为了克服这一点,我们引入了HSimplE和HypE,这两种基于嵌入的方法直接与知识高频工作有关。在这两种模型中,预测是关系嵌入、实体嵌入及其在关系中的相应位置的函数。我们还开发了用于高精密预测的公共数据集、基准和基线,并实验性地表明拟议模型比基线更有效。