Active sentence learning by adversarial uncertainty sampling in discrete space

Dongyu Ru, Yating Luo, Lin Qiu, Hao Zhou, Lei Li, Weinan Zhang, Yong Yu

EMNLP Findings, 2020


Abstract
In this paper, we focus on reducing the labeled data size for sentence learning. We argue that real-time uncertainty sampling of active learning is time-consuming, and delayed uncertainty sampling may lead to the ineffective sampling problem. We propose the adversarial uncertainty sampling in discrete space, in which sentences are mapped into the popular pre-trained language model encoding space. Our proposed approach can work in real-time and is more efficient than traditional uncertainty sampling. Experimental results on five datasets show that our proposed approach outperforms strong baselines and can achieve better uncertainty sampling effectiveness with acceptable running time.

Please cite as:

@article{ru2020active,
  title={Active sentence learning by adversarial uncertainty sampling in discrete space},
  author={Ru, Dongyu and Luo, Yating and Qiu, Lin and Zhou, Hao and Li, Lei and Zhang, Weinan and Yu, Yong},
  journal={arXiv preprint arXiv:2004.08046},
  year={2020}
}