Multimodal Entity Alignment Based on Relation-aware Multi-subgraph Graph Neural Network
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    Abstract:

    Multi-modal entity alignment (MMEA) is a crucial technique for integrating multi-source heterogeneous multi-modal knowledge graphs (MMKGs). This integration is typically achieved by encoding graph structure and calculating the plausibility of multi-modal representation between entities. However, existing MMEA methods tend to directly employ pre-trained models and overlook the fusion between modalities as well as the fusion between modal features and graph structures. To address these limitations, this study proposes a novel approach called relation-aware multi-subgraph graph neural network (RAMS) for obtaining multi-modal representation in the context of entity alignment. RAMS utilizes a multi-subgraph graph neural network for fusing modality information and graph structure to derive entity representation. The alignment results are subsequently obtained through cross-domain similarity calculation. Extensive experiments demonstrate that RAMS outperforms baseline models in terms of accuracy, efficiency, and robustness.

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金佳惠,李治江,刘谊章.关系敏感型多子图图神经网络的多模态实体对齐.计算机系统应用,2024,33(3):245-254

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  • Received:September 07,2023
  • Revised:October 20,2023
  • Online: January 18,2024
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