Learning Typed Rules over Knowledge Graphs

Honglin Wu, Zhe Wang, Kewen Wang, Yishu Shen
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引用次数: 6

Abstract

Rule learning from large datasets has regained extensive interest as rules are useful for developing explainable approaches to many applications in knowledge graphs. However, existing methods for rule learning are still limited in terms of scalability and rule quality. This paper presents a new method for learning typed rules by employing entity class information. Our experimental evaluation shows the superiority of our system compared to state-of-the-art rule learners. In particular, we demonstrate the usefulness of typed rules in reasoning for link prediction.
在知识图上学习类型化规则
从大型数据集中学习规则重新获得了广泛的兴趣,因为规则对于开发知识图中许多应用程序的可解释方法很有用。然而,现有的规则学习方法在可伸缩性和规则质量方面仍然受到限制。本文提出了一种利用实体类信息学习类型化规则的新方法。我们的实验评估表明,与最先进的规则学习器相比,我们的系统具有优越性。特别地,我们展示了类型化规则在链接预测推理中的有用性。
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