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Main Authors: Li, Linyu, Jin, Zhi, Zhang, Yichi, Jin, Dongming, Dou, Chengfeng, He, Yuanpeng, Zhang, Xuan, Zhao, Haiyan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.21973
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author Li, Linyu
Jin, Zhi
Zhang, Yichi
Jin, Dongming
Dou, Chengfeng
He, Yuanpeng
Zhang, Xuan
Zhao, Haiyan
author_facet Li, Linyu
Jin, Zhi
Zhang, Yichi
Jin, Dongming
Dou, Chengfeng
He, Yuanpeng
Zhang, Xuan
Zhao, Haiyan
contents Knowledge graphs (KGs) play a key role in promoting various multimedia and AI applications. However, with the explosive growth of multi-modal information, traditional knowledge graph completion (KGC) models cannot be directly applied. This has attracted a large number of researchers to study multi-modal knowledge graph completion (MMKGC). Since MMKG extends KG to the visual and textual domains, MMKGC faces two main challenges: (1) how to deal with the fine-grained modality information interaction and awareness; (2) how to ensure the dominant role of graph structure in multi-modal knowledge fusion and deal with the noise generated by other modalities during modality fusion. To address these challenges, this paper proposes a novel MMKGC model named TSAM, which integrates fine-grained modality interaction and dominant graph structure to form a high-performance MMKGC framework. Specifically, to solve the challenges, TSAM proposes the Fine-grained Modality Awareness Fusion method (FgMAF), which uses pre-trained language models to better capture fine-grained semantic information interaction of different modalities and employs an attention mechanism to achieve fine-grained modality awareness and fusion. Additionally, TSAM presents the Structure-aware Contrastive Learning method (SaCL), which utilizes two contrastive learning approaches to align other modalities more closely with the structured modality. Extensive experiments show that the proposed TSAM model significantly outperforms existing MMKGC models on widely used multi-modal datasets.
format Preprint
id arxiv_https___arxiv_org_abs_2505_21973
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Towards Structure-aware Model for Multi-modal Knowledge Graph Completion
Li, Linyu
Jin, Zhi
Zhang, Yichi
Jin, Dongming
Dou, Chengfeng
He, Yuanpeng
Zhang, Xuan
Zhao, Haiyan
Multimedia
Knowledge graphs (KGs) play a key role in promoting various multimedia and AI applications. However, with the explosive growth of multi-modal information, traditional knowledge graph completion (KGC) models cannot be directly applied. This has attracted a large number of researchers to study multi-modal knowledge graph completion (MMKGC). Since MMKG extends KG to the visual and textual domains, MMKGC faces two main challenges: (1) how to deal with the fine-grained modality information interaction and awareness; (2) how to ensure the dominant role of graph structure in multi-modal knowledge fusion and deal with the noise generated by other modalities during modality fusion. To address these challenges, this paper proposes a novel MMKGC model named TSAM, which integrates fine-grained modality interaction and dominant graph structure to form a high-performance MMKGC framework. Specifically, to solve the challenges, TSAM proposes the Fine-grained Modality Awareness Fusion method (FgMAF), which uses pre-trained language models to better capture fine-grained semantic information interaction of different modalities and employs an attention mechanism to achieve fine-grained modality awareness and fusion. Additionally, TSAM presents the Structure-aware Contrastive Learning method (SaCL), which utilizes two contrastive learning approaches to align other modalities more closely with the structured modality. Extensive experiments show that the proposed TSAM model significantly outperforms existing MMKGC models on widely used multi-modal datasets.
title Towards Structure-aware Model for Multi-modal Knowledge Graph Completion
topic Multimedia
url https://arxiv.org/abs/2505.21973