In the field of representation learning on knowledge graphs (KGs), a hyper-relational fact consists of a main triple and several auxiliary attribute-value descriptions, which is considered more comprehensive and specific than a triple-based fact. However, currently available hyper-relational KG embedding methods in a single view are limited in application because they weaken the hierarchical structure that represents the affiliation between entities. To overcome this limitation, we propose a dual-view hyper-relational KG structure (DH-KG) that contains a hyper-relational instance view for entities and a hyper-relational ontology view for concepts that are abstracted hierarchically from the entities. This paper defines link prediction and entity typing tasks on DH-KG for the first time and constructs two DH-KG datasets, JW44K-6K, extracted from Wikidata, and HTDM based on medical data. Furthermore, we propose DHGE, a DH-KG embedding model based on GRAN encoders, HGNNs, and joint learning. DHGE outperforms baseline models on DH-KG, according to experimental results. Finally, we provide an example of how this technology can be used to treat hypertension. Our model and new datasets are publicly available.
翻译:在知识图谱的表示学习领域中,具有超关系的事实包括一个主三元组以及多个辅助属性-值描述,相对于基于三元组的事实,它被认为更全面和特定。然而,现有的单视图超关系知识图嵌入方法由于弱化了表示实体之间从属关系的分层结构,应用上受到了限制。为了克服这个限制,我们提出了一种包含针对实体的超关系实例视图和从实体层次结构抽象出的概念的超关系本体视图的双视图超关系知识图结构(DH-KG)。本文首次在DH-KG上定义了链接预测和实体类型划分任务,并构建了两个DH-KG数据集:从维基数据中提取的JW44K-6K和基于医疗数据的HTDM。此外,我们提出了DHGE,一种基于GRAN编码器、HGNN和联合学习的DH-KG嵌入模型。根据实验结果,DHGE在DH-KG上的表现优于基线模型。最后,我们提供了如何使用此技术治疗高血压的示例。我们的模型和新数据集是公开可用的。