Inductive link prediction -- where entities during training and inference stages can be different -- has been shown to be promising for completing continuously evolving knowledge graphs. Existing models of inductive reasoning mainly focus on predicting missing links by learning logical rules. However, many existing approaches do not take into account semantic correlations between relations, which are commonly seen in real-world knowledge graphs. To address this challenge, we propose a novel inductive reasoning approach, namely TACT, which can effectively exploit Topology-Aware CorrelaTions between relations in an entity-independent manner. TACT is inspired by the observation that the semantic correlation between two relations is highly correlated to their topological structure in knowledge graphs. Specifically, we categorize all relation pairs into several topological patterns, and then propose a Relational Correlation Network (RCN) to learn the importance of the different patterns for inductive link prediction. Experiments demonstrate that TACT can effectively model semantic correlations between relations, and significantly outperforms existing state-of-the-art methods on benchmark datasets for the inductive link prediction task.
翻译:实验性推理模型主要侧重于通过学习逻辑规则来预测缺失的环节。但是,许多现有方法没有考虑到现实世界知识图中常见的关系的语义相关性。为了应对这一挑战,我们提出了一种新的推理方法,即TACT,它能够有效地利用以独立实体的方式在关系中存在的地形-Aware CorrelaTions。实验的灵感来自两种关系之间的语义相关性与其知识图中的地形结构密切相关的观察。具体地说,我们将所有关系配对归为几种地形图案,然后提出一个关系关联网络,以了解不同模式对于感性联系预测的重要性。实验表明,实验性实验能够有效地模拟感应联系关系之间的语义-Aware CorrelaTations。