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Continuous Contrastive Learning for Long-Tailed Semi-Supervised Recognition

Machine Learning 2024-10-10 v1

Abstract

Long-tailed semi-supervised learning poses a significant challenge in training models with limited labeled data exhibiting a long-tailed label distribution. Current state-of-the-art LTSSL approaches heavily rely on high-quality pseudo-labels for large-scale unlabeled data. However, these methods often neglect the impact of representations learned by the neural network and struggle with real-world unlabeled data, which typically follows a different distribution than labeled data. This paper introduces a novel probabilistic framework that unifies various recent proposals in long-tail learning. Our framework derives the class-balanced contrastive loss through Gaussian kernel density estimation. We introduce a continuous contrastive learning method, CCL, extending our framework to unlabeled data using reliable and smoothed pseudo-labels. By progressively estimating the underlying label distribution and optimizing its alignment with model predictions, we tackle the diverse distribution of unlabeled data in real-world scenarios. Extensive experiments across multiple datasets with varying unlabeled data distributions demonstrate that CCL consistently outperforms prior state-of-the-art methods, achieving over 4% improvement on the ImageNet-127 dataset. Our source code is available at https://github.com/zhouzihao11/CCL

Keywords

Cite

@article{arxiv.2410.06109,
  title  = {Continuous Contrastive Learning for Long-Tailed Semi-Supervised Recognition},
  author = {Zi-Hao Zhou and Siyuan Fang and Zi-Jing Zhou and Tong Wei and Yuanyu Wan and Min-Ling Zhang},
  journal= {arXiv preprint arXiv:2410.06109},
  year   = {2024}
}

Comments

Accepted at NeurIPS 2024

R2 v1 2026-06-28T19:13:07.661Z