Publication | Open Access
MHGCN: Multiview highway graph convolutional network for cross-lingual entity alignment
33
Citations
21
References
2021
Year
EngineeringMachine LearningCross-lingual RepresentationSemantic WebText MiningWord EmbeddingsNatural Language ProcessingEntity AlignmentKnowledge Graph EmbeddingsData ScienceComputational LinguisticsCross-lingual Entity AlignmentEmbeddingsLanguage StudiesNamed-entity RecognitionMachine TranslationEntity DisambiguationKnowledge GraphsDeep LearningRelation EmbeddingSemantic NetworkSemantic GraphLinguistics
Knowledge graphs (KGs) provide a wealth of prior knowledge for the research on social networks. Cross-lingual entity alignment aims at integrating complementary KGs from different languages and thus benefits various knowledge-driven social network studies. Recent entity alignment methods often take an embedding-based approach to model the entity and relation embedding of KGs. However, these studies mostly focus on the information of the entity itself and its structural features but ignore the influence of multiple types of data in KGs. In this paper, we propose a new embedding-based framework named multiview highway graph convolutional network (MHGCN), which considers the entity alignment from the views of entity semantic, relation semantic, and entity attribute. To learn the structural features of an entity, the MHGCN employs a highway graph convolutional network (GCN) for entity embedding in each view. In addition, the MHGCN weights and fuses the multiple views according to the importance of the embedding from each view to obtain a better entity embedding. The alignment entities are identified based on the similarity of entity embeddings. The experimental results show that the MHGCN consistently outperforms the state-of-the-art alignment methods. The research also will benefit knowledge fusion through cross-lingual KG entity alignment.
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