MCL-NER: Cross-Lingual Named Entity Recognition via Multi-View Contrastive Learning
Ying Mo,
Jian Yang,
Jiahao Liu
et al.
Abstract:Cross-lingual named entity recognition (CrossNER) faces challenges stemming from uneven performance due to the scarcity of multilingual corpora, especially for non-English
data. While prior efforts mainly focus on data-driven transfer methods, a significant aspect that has not been fully explored is aligning both semantic and token-level representations across diverse languages. In this paper, we propose Multi-view Contrastive Learning for Cross-lingual Named
Entity Recognition (MCL-NER). Specifically, we refr… Show more
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