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QaNER: Prompting Question Answering Models for Few-shot Named Entity Recognition (2203.01543v2)

Published 3 Mar 2022 in cs.CL, cs.AI, and cs.LG

Abstract: Recently, prompt-based learning for pre-trained LLMs has succeeded in few-shot Named Entity Recognition (NER) by exploiting prompts as task guidance to increase label efficiency. However, previous prompt-based methods for few-shot NER have limitations such as a higher computational complexity, poor zero-shot ability, requiring manual prompt engineering, or lack of prompt robustness. In this work, we address these shortcomings by proposing a new prompt-based learning NER method with Question Answering (QA), called QaNER. Our approach includes 1) a refined strategy for converting NER problems into the QA formulation; 2) NER prompt generation for QA models; 3) prompt-based tuning with QA models on a few annotated NER examples; 4) zero-shot NER by prompting the QA model. Comparing the proposed approach with previous methods, QaNER is faster at inference, insensitive to the prompt quality, and robust to hyper-parameters, as well as demonstrating significantly better low-resource performance and zero-shot capability.

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Authors (6)
  1. Andy T. Liu (21 papers)
  2. Wei Xiao (100 papers)
  3. Henghui Zhu (24 papers)
  4. Dejiao Zhang (20 papers)
  5. Shang-Wen Li (55 papers)
  6. Andrew Arnold (14 papers)
Citations (25)