A soft nearest-neighbor framework for continual semi-supervised learning
About
Despite significant advances, the performance of state-of-the-art continual learning approaches hinges on the unrealistic scenario of fully labeled data. In this paper, we tackle this challenge and propose an approach for continual semi-supervised learning--a setting where not all the data samples are labeled. A primary issue in this scenario is the model forgetting representations of unlabeled data and overfitting the labeled samples. We leverage the power of nearest-neighbor classifiers to nonlinearly partition the feature space and flexibly model the underlying data distribution thanks to its non-parametric nature. This enables the model to learn a strong representation for the current task, and distill relevant information from previous tasks. We perform a thorough experimental evaluation and show that our method outperforms all the existing approaches by large margins, setting a solid state of the art on the continual semi-supervised learning paradigm. For example, on CIFAR-100 we surpass several others even when using at least 30 times less supervision (0.8% vs. 25% of annotations). Finally, our method works well on both low and high resolution images and scales seamlessly to more complex datasets such as ImageNet-100. The code is publicly available on https://github.com/kangzhiq/NNCSL
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Continual Semantic Segmentation | Med Semi-Supervised-JASCL | Session 0 Dice Score70 | 9 | |
| Semantic segmentation | Natural-JASCL Semi-Supervised (Session 0) | mIoU47.76 | 9 | |
| Semantic segmentation | Semi-Supervised Natural-JASCL (Session 3) | mIoU0.46 | 9 | |
| Semantic segmentation | Natural-JASCL Semi-Supervised (Session 1) | mIoU0.79 | 9 | |
| Semantic segmentation | Natural-JASCL Semi-Supervised (Session 2) | mIoU1.27 | 9 |