In a hyper-relational knowledge graph (HKG), each fact is composed of a main triple associated with attribute-value qualifiers, which express additional factual knowledge. The hyper-relational knowledge graph completion (HKGC) task aims at inferring plausible missing links in a HKG. Most existing approaches to HKGC focus on enhancing the communication between qualifier pairs and main triples, while overlooking two important properties that emerge from the monotonicity of the hyper-relational graphs representation regime. Stage Reasoning allows for a two-step reasoning process, facilitating the integration of coarse-grained inference results derived solely from main triples and fine-grained inference results obtained from hyper-relational facts with qualifiers. In the initial stage, coarse-grained results provide an upper bound for correct predictions, which are subsequently refined in the fine-grained step. More generally, Qualifier Monotonicity implies that by attaching more qualifier pairs to a main triple, we may only narrow down the answer set, but never enlarge it. This paper proposes the HyperMono model for hyper-relational knowledge graph completion, which realizes stage reasoning and qualifier monotonicity. To implement qualifier monotonicity HyperMono resorts to cone embeddings. Experiments on three real-world datasets with three different scenario conditions demonstrate the strong performance of HyperMono when compared to the SoTA.
翻译:在超关系知识图谱(HKG)中,每个事实由一个主三元组及其关联的属性-值限定符组成,这些限定符表达了附加的事实性知识。超关系知识图谱补全(HKGC)任务旨在推断HKG中可能存在的缺失链接。现有的大多数HKGC方法侧重于增强限定符对与主三元组之间的信息交互,却忽略了超关系图表示机制中单调性所衍生的两个重要性质。阶段推理允许采用两步推理过程,便于整合仅从主三元组导出的粗粒度推理结果与从带有限定符的超关系事实获得的细粒度推理结果。在初始阶段,粗粒度结果为正确预测提供上界,随后在细粒度步骤中对其进行精炼。更一般地,限定符单调性意味着向主三元组附加更多限定符对时,我们只能缩小答案集,而绝不会扩大它。本文提出了用于超关系知识图谱补全的HyperMono模型,该模型实现了阶段推理与限定符单调性。为实现限定符单调性,HyperMono采用了锥嵌入方法。在三种不同场景条件下对三个真实世界数据集的实验表明,与现有最优方法相比,HyperMono具有强劲的性能表现。