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Improving Knowledge Graph Entity Alignment with Graph Augmentation

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arxiv 2304.14585 v1 pith:JSE5FKHF submitted 2023-04-28 cs.CL cs.SI

Improving Knowledge Graph Entity Alignment with Graph Augmentation

classification cs.CL cs.SI
keywords alignmentgraphaugmentationentitiesentityknowledgelearningmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Entity alignment (EA) which links equivalent entities across different knowledge graphs (KGs) plays a crucial role in knowledge fusion. In recent years, graph neural networks (GNNs) have been successfully applied in many embedding-based EA methods. However, existing GNN-based methods either suffer from the structural heterogeneity issue that especially appears in the real KG distributions or ignore the heterogeneous representation learning for unseen (unlabeled) entities, which would lead the model to overfit on few alignment seeds (i.e., training data) and thus cause unsatisfactory alignment performance. To enhance the EA ability, we propose GAEA, a novel EA approach based on graph augmentation. In this model, we design a simple Entity-Relation (ER) Encoder to generate latent representations for entities via jointly modeling comprehensive structural information and rich relation semantics. Moreover, we use graph augmentation to create two graph views for margin-based alignment learning and contrastive entity representation learning, thus mitigating structural heterogeneity and further improving the model's alignment performance. Extensive experiments conducted on benchmark datasets demonstrate the effectiveness of our method.

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