Papers with dual-space embedding

1 papers
Unifying Dual-Space Embedding for Entity Alignment via Contrastive Learning (2025.coling-main)

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Challenge: Entity alignment (EA) aims to match identical entities across knowledge graphs (KGs) Graph neural network-based entity alignment methods have achieved promising results in Euclidean space, but KGs often contain complex local and hierarchical structures, which are hard to represent in a single space.
Approach: They propose a method which unifies dual-space embedding to preserve the intrinsic structure of KGs.
Outcome: The proposed method achieves state-of-the-art in structure-based EA on benchmark datasets.

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