An entity alignment method with attribute augmentation and contrastive learning

Cheng Yang, Chunxia Zhang*, Yihao Chen

*Corresponding author for this work

Research output: Contribution to journalConference articlepeer-review

Abstract

The entity alignment(EA) task is to identify entities with the same semantics in the knowledge graph(KG), an essential issue in KG fusion and big data mining. Existing entity alignment methods mainly adopt graph embedding-based methods. However, they still have some shortcomings. First, they heavily rely on high-quality alignment seed and external semantic information. Secondly, the present attention mechanism focuses on the entire graph information, neglecting the noise of attribute information. This paper proposes an EA approach based on Attribute Augmentation and Contrastive Learning (AACL). Our method introduces attribute augmentation to enhance the structure information of knowledge graphs and reduce dependence on alignment seed. A masked attention mechanism is developed to emphasize important attribute information and mask out invalid attributes to better capture semantic dependencies in the KG. Experimental results on three public datasets indicate that our AACL outperforms the present entity alignment approaches.

Original languageEnglish
Article number012049
JournalJournal of Physics: Conference Series
Volume2858
Issue number1
DOIs
Publication statusPublished - 2024
Event2024 6th International Conference on Artificial Intelligence Technologies and Applications, ICAITA 2024 - Changchun, China
Duration: 14 Jun 202416 Jun 2024

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