English

Self-Training with Differentiable Teacher

Computation and Language 2022-05-04 v2 Machine Learning

Abstract

Self-training achieves enormous success in various semi-supervised and weakly-supervised learning tasks. The method can be interpreted as a teacher-student framework, where the teacher generates pseudo-labels, and the student makes predictions. The two models are updated alternatingly. However, such a straightforward alternating update rule leads to training instability. This is because a small change in the teacher may result in a significant change in the student. To address this issue, we propose DRIFT, short for differentiable self-training, that treats teacher-student as a Stackelberg game. In this game, a leader is always in a more advantageous position than a follower. In self-training, the student contributes to the prediction performance, and the teacher controls the training process by generating pseudo-labels. Therefore, we treat the student as the leader and the teacher as the follower. The leader procures its advantage by acknowledging the follower's strategy, which involves differentiable pseudo-labels and differentiable sample weights. Consequently, the leader-follower interaction can be effectively captured via Stackelberg gradient, obtained by differentiating the follower's strategy. Experimental results on semi- and weakly-supervised classification and named entity recognition tasks show that our model outperforms existing approaches by large margins.

Keywords

Cite

@article{arxiv.2109.07049,
  title  = {Self-Training with Differentiable Teacher},
  author = {Simiao Zuo and Yue Yu and Chen Liang and Haoming Jiang and Siawpeng Er and Chao Zhang and Tuo Zhao and Hongyuan Zha},
  journal= {arXiv preprint arXiv:2109.07049},
  year   = {2022}
}

Comments

NAACL 2022 (Findings)

R2 v1 2026-06-24T05:58:28.869Z