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Article

Multi-modal Graph Convolutional Network for Knowledge Graph Entity Alignment

Published: 06 October 2023 Publication History

Abstract

Entity Alignment (EA) plays a crucial role in the integration of multiple knowledge graphs (KGs). With the blooming of KGs, the auxiliary multi-modal data, such as attributions and images, are widely used to enhance alignment performance. However, most existing techniques for multi-modal knowledge exploitation separately pre-train uni-modal features and heuristically merge these features, failing to adequately consider the interplay between different modalities. To tackle this problem, we propose a novel model entitled MGCEA (Multi-modal Graph Convolutional network for knowledge graph Entity Alignment), which considers the guidance of neighborhood structure in cross-modal embedding enhancement. Specifically, MGCEA pre-trains multiple modal features to initialize their corresponding embeddings. Then a multi-modal embedding enhancement mechanism, which consists of a multi-modal graph convolution network and an attention network, is developed to achieve cross-modal enhancement guided by the neighborhood structure and learn an effective joint embedding. Moreover, a joint loss based on contrast learning is introduced to optimize model parameters by considering intra-modal relationships and cross-modal interactions. The extensive experiments conducted on two benchmarks demonstrate that MGCEA significantly outperforms the state-of-the-art multi-modal knowledge graph entity alignment baselines.

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Information

Published In

cover image Guide Proceedings
Web and Big Data: 7th International Joint Conference, APWeb-WAIM 2023, Wuhan, China, October 6–8, 2023, Proceedings, Part I
Oct 2023
532 pages
ISBN:978-981-97-2302-7
DOI:10.1007/978-981-97-2303-4
  • Editors:
  • Xiangyu Song,
  • Ruyi Feng,
  • Yunliang Chen,
  • Jianxin Li,
  • Geyong Min

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 06 October 2023

Author Tags

  1. Entity Alignment
  2. Knowledge Graph
  3. Graph Convolutional Network
  4. Multi-modal Representation Learning

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