A Simplifying and Learnable Graph Convolutional Attention Network for Unsupervised Knowledge Graphs Alignment
The success of current Entity Alignment (EA) task depends largely on the supervision information provided by labeled data. Considering the cost of labeled data, most supervised methods are difficult to apply in practical scenarios. Therefore, more and more works based on contrastive learning, active...
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Zusammenfassung: | The success of current Entity Alignment (EA) task depends largely on the
supervision information provided by labeled data. Considering the cost of
labeled data, most supervised methods are difficult to apply in practical
scenarios. Therefore, more and more works based on contrastive learning, active
learning or other deep learning techniques have been developed, to solve the
performance bottleneck caused by the lack of labeled data. However, the
existing unsupervised EA methods still have some limitations, either their
modeling complexity is high or they cannot balance the effectiveness and
practicality of alignment. To overcome these issues, we propose a Simplifying
and Learnable graph convolutional attention network for Unsupervised Knowledge
Graphs alignment method (SLU). Specifically, we first introduce LCAT, a new and
simple framework as the backbone network to model the graph structure of two
KGs. Then we design a reconstruction method of relation structure based on
potential matching relations for efficiently filtering invalid neighborhood
information of aligned entities, to improve the usability and scalability of
SLU. Impressively, a similarity function based on consistency is proposed to
better measure the similarity of candidate entity pairs. Finally, we conduct
extensive experiments on three datasets of different sizes (15K and 100K) and
different types (cross-lingual and monolingual) to verify the superiority of
SLU. Experimental results show that SLU significantly improves alignment
accuracy, outperforming 25 supervised or unsupervised methods, and improving
6.4% in Hits@1 over the best baseline in the best case. |
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DOI: | 10.48550/arxiv.2410.13263 |