N-ary Knowledge Graphs (NKGs) are a specialized type of knowledge graph designed to efficiently represent complex real-world facts. Unlike traditional knowledge graphs, where a fact typically involves two entities, NKGs can capture n-ary facts containing more than two entities. Link prediction in NKGs aims to predict missing elements within these n-ary facts, which is essential for completing NKGs and improving the performance of downstream applications. This task has recently gained significant attention. In this paper, we present the first comprehensive survey of link prediction in NKGs, providing an overview of the field, systematically categorizing existing methods, and analyzing their performance and application scenarios. We also outline promising directions for future research.
翻译:N元知识图谱是一种专门设计用于高效表示复杂现实世界事实的知识图谱。与传统知识图谱中事实通常仅涉及两个实体不同,N元知识图谱能够捕获包含两个以上实体的n元事实。N元知识图谱中的链接预测旨在预测这些n元事实中的缺失元素,这对于完善N元知识图谱和提升下游应用性能至关重要。该任务近年来受到广泛关注。本文首次对N元知识图谱链接预测领域进行全面综述,系统梳理了该领域的研究现状,对现有方法进行了系统分类,并分析了其性能特点与应用场景。最后,本文展望了该领域未来具有潜力的研究方向。