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Revisiting Self-Training for Few-Shot Learning of Language Model (2110.01256v1)

Published 4 Oct 2021 in cs.CL

Abstract: As unlabeled data carry rich task-relevant information, they are proven useful for few-shot learning of LLM. The question is how to effectively make use of such data. In this work, we revisit the self-training technique for LLM fine-tuning and present a state-of-the-art prompt-based few-shot learner, SFLM. Given two views of a text sample via weak and strong augmentation techniques, SFLM generates a pseudo label on the weakly augmented version. Then, the model predicts the same pseudo label when fine-tuned with the strongly augmented version. This simple approach is shown to outperform other state-of-the-art supervised and semi-supervised counterparts on six sentence classification and six sentence-pair classification benchmarking tasks. In addition, SFLM only relies on a few in-domain unlabeled data. We conduct a comprehensive analysis to demonstrate the robustness of our proposed approach under various settings, including augmentation techniques, model scale, and few-shot knowledge transfer across tasks.

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Authors (6)
  1. Yiming Chen (106 papers)
  2. Yan Zhang (954 papers)
  3. Chen Zhang (403 papers)
  4. Grandee Lee (6 papers)
  5. Ran Cheng (130 papers)
  6. Haizhou Li (285 papers)
Citations (40)