Transfer and Share: Semi-Supervised Learning from Long-Tailed Data

Abstract

Long-Tailed Semi-Supervised Learning (LTSSL) aims to learn from class-imbalanced data where only a few samples are annotated. Existing solutions typically require substantial cost to solve complex optimization problems, or class-balanced undersampling which can result in information loss. In this paper, we present the TRAS (TRAnsfer and Share) to effectively utilize long-tailed semi-supervised data. TRAS transforms the imbalanced pseudo-label distribution of a traditional SSL model via a delicate function to enhance the supervisory signals for minority classes. It then transfers the distribution to a target model such that the minority class will receive significant attention. Interestingly, TRAS shows that more balanced pseudo-label distribution can substantially benefit minority-class training, instead of seeking to generate accurate pseudo-labels as in previous works. To simplify the approach, TRAS merges the training of the traditional SSL model and the target model into a single procedure by sharing the feature extractor, where both classifiers help improve the representation learning. According to extensive experiments, TRAS delivers much higher accuracy than state-of-the-art methods in the entire set of classes as well as minority classes. Code for TRAS is available at https://github.com/Stomach-ache/TRAS.

Cite

Text

Wei et al. "Transfer and Share: Semi-Supervised Learning from Long-Tailed Data." Machine Learning, 2024. doi:10.1007/S10994-022-06247-Z

Markdown

[Wei et al. "Transfer and Share: Semi-Supervised Learning from Long-Tailed Data." Machine Learning, 2024.](https://mlanthology.org/mlj/2024/wei2024mlj-transfer/) doi:10.1007/S10994-022-06247-Z

BibTeX

@article{wei2024mlj-transfer,
  title     = {{Transfer and Share: Semi-Supervised Learning from Long-Tailed Data}},
  author    = {Wei, Tong and Liu, Qian-Yu and Shi, Jiang-Xin and Tu, Wei-Wei and Guo, Lan-Zhe},
  journal   = {Machine Learning},
  year      = {2024},
  pages     = {1725-1742},
  doi       = {10.1007/S10994-022-06247-Z},
  volume    = {113},
  url       = {https://mlanthology.org/mlj/2024/wei2024mlj-transfer/}
}