路径旋转:基于复杂空间中路径关系旋转的知识图嵌入

Xiaohan Zhou, Yunhui Yi, Geng Jia
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引用次数: 6

摘要

研究了知识图中实体和关系的知识表示学习问题,以预测缺失环节。准确完成这一任务的关键是对各种关系模式进行建模和推断。本文提出了一种新的基于旋转的知识表示学习模型Path-RotatE,该模型考虑了额外的路径来建模实体之间丰富的推理模式。此外,本文还考虑了路径与直接关系之间的相关性。这样,我们提高了路径的可靠性,使其更适合训练。最后,在FB15k、FB15-237、WN18、WN18RR等数据集上进行实体预测实验。结果表明,与RotatE、PTransE等基线模型相比,Path-RotatE模型在MR、MRR和Hits@N方面都有一定的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Path-RotatE: Knowledge Graph Embedding by Relational Rotation of Path in Complex Space
We study the problem of learning knowledge representations of entities and relations in knowledge graphs to predict missing links. The key to precisely accomplish a such task is modeling and inferring the diverse patterns of the relations. In this paper, we present a new rotation-based knowledge representation learning model named Path-RotatE, which considers additional paths to model rich inference patterns between entities. In addition, this paper considers the correlation between the path and the direct relation. In this way, we improve reliability of the path, making it more suitable to train. Finally, this paper conducts entity prediction experiments on datasets such as FB15k, FB15-237, WN18 and WN18RR. The results show that the Path-RotatE model has a certain improvement in MR, MRR and Hits@N compared to RotatE, PTransE and other baseline models.
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