Knowledge graphs (KGs) have gained prominence for their ability to learn representations for uni-relational facts. Recently, research has focused on modeling hyper-relational facts, which move beyond the restriction of uni-relational facts and allow us to represent more complex and real-world information. However, existing approaches for learning representations on hyper-relational KGs majorly focus on enhancing the communication from qualifiers to base triples while overlooking the flow of information from base triple to qualifiers. This can lead to suboptimal qualifier representations, especially when a large amount of qualifiers are presented. It motivates us to design a framework that utilizes multiple aggregators to learn representations for hyper-relational facts: one from the perspective of the base triple and the other one from the perspective of the qualifiers. Experiments demonstrate the effectiveness of our framework for hyper-relational knowledge graph completion across multiple datasets. Furthermore, we conduct an ablation study that validates the importance of the various components in our framework. The code to reproduce our results can be found at \url{https://github.com/HarryShomer/QUAD}.
翻译:知识图形(KGs)因其学习单一关系事实的表达方式的能力而越来越突出。最近,研究侧重于超关系事实的模型化,这超越了对单一关系事实的限制,使我们可以代表更复杂和现实世界的信息。然而,在超关系KGs上学习演示的现有方法主要侧重于加强从限定词到基底三倍的通信,同时忽略从基数三倍到限定词的信息流动。这可能导致亚于最优化的限定词表达方式,特别是当提出大量限定词时。它激励我们设计一个框架,利用多个聚合器学习超关系事实的表述:一个从基数三倍的角度,另一个从基数角度,另一个从基数三倍的角度。实验表明我们框架在多个数据集中完成超关系知识图形的实效。此外,我们进行一项对比研究,以证实我们框架中各种组成部分的重要性。复制我们结果的代码可以在 Qubgr/Harmur/AD/AD/AD/ADR}