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Modality-Aware Negative Sampling for Multi-modal Knowledge Graph Embedding

About

Negative sampling (NS) is widely used in knowledge graph embedding (KGE), which aims to generate negative triples to make a positive-negative contrast during training. However, existing NS methods are unsuitable when multi-modal information is considered in KGE models. They are also inefficient due to their complex design. In this paper, we propose Modality-Aware Negative Sampling (MANS) for multi-modal knowledge graph embedding (MMKGE) to address the mentioned problems. MANS could align structural and visual embeddings for entities in KGs and learn meaningful embeddings to perform better in multi-modal KGE while keeping lightweight and efficient. Empirical results on two benchmarks demonstrate that MANS outperforms existing NS methods. Meanwhile, we make further explorations about MANS to confirm its effectiveness.

Yichi Zhang, Mingyang Chen, Wen Zhang• 2023

Related benchmarks

TaskDatasetResultRank
Knowledge Graph CompletionDB15K
MRR28.82
22
Knowledge Graph CompletionMKG-W
MRR0.3088
22
Knowledge Graph CompletionMKG-Y
MRR29.03
22
Knowledge Graph CompletionOverall DB15K, MKG-W, MKG-Y
MRR29.58
22
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