Learning from Language Description: Low-shot Named Entity Recognition via Decomposed Framework (2109.05357v1)
Abstract: In this work, we study the problem of named entity recognition (NER) in a low resource scenario, focusing on few-shot and zero-shot settings. Built upon large-scale pre-trained LLMs, we propose a novel NER framework, namely SpanNER, which learns from natural language supervision and enables the identification of never-seen entity classes without using in-domain labeled data. We perform extensive experiments on 5 benchmark datasets and evaluate the proposed method in the few-shot learning, domain transfer and zero-shot learning settings. The experimental results show that the proposed method can bring 10%, 23% and 26% improvements in average over the best baselines in few-shot learning, domain transfer and zero-shot learning settings respectively.
- Yaqing Wang (59 papers)
- Haoda Chu (2 papers)
- Chao Zhang (907 papers)
- Jing Gao (98 papers)