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Supervised Contrastive Replay: Revisiting the Nearest Class Mean Classifier in Online Class-Incremental Continual Learning

机译:监督对比重播:重新审视最近的班级均值分类,在在线类渐进式持续学习中

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Online class-incremental continual learning (CL) studies the problem of learning new classes continually from an online non-stationary data stream, intending to adapt to new data while mitigating catastrophic forgetting. While memory replay has shown promising results, the recency bias in online learning caused by the commonly used Softmax classifier remains an unsolved challenge. Although the Nearest-Class-Mean (NCM) classifier is significantly undervalued in the CL community, we demonstrate that it is a simple yet effective substitute for the Softmax classifier. It addresses the recency bias and avoids structural changes in the fully-connected layer for new classes. Moreover, we observe considerable and consistent performance gains when replacing the Softmax classifier with the NCM classifier for several state-of-the-art replay methods.To leverage the NCM classifier more effectively, data embeddings belonging to the same class should be clustered and well-separated from those with a different class label. To this end, we contribute Supervised Contrastive Replay (SCR), which explicitly encourages samples from the same class to cluster tightly in embedding space while pushing those of different classes further apart during replay-based training. Overall, we observe that our proposed SCR substantially reduces catastrophic forgetting and outperforms state-of-the-art CL methods by a significant margin on a variety of datasets.
机译:在线类 - 增量持续学习(CL)研究从在线非静止数据流不断地学习新课程的问题,打算适应新数据,同时缓解灾难性的遗忘。虽然内存重播显示了有希望的结果,但由常用的SoftMax分类器造成的在线学习中的新近偏差仍然是一个未解决的挑战。虽然最近的类别(NCM)分类器在CL社区中被显着低估,但我们证明它是So​​ftmax分类器的简单而有效的替代品。它地址偏离了新类别的完全连接层的结构变化。此外,在用NCM分类器替换多个最先进的重播方法时,我们观察到相当大的和一致的性能提升。要更有效地利用NCM分类器,属于同一类的数据嵌入式应群集且良好 - 与不同类标签的那些。为此,我们有助于监督对比度重放(SCR),该重播(SCR)明确鼓励在嵌入空间中紧密地群集的样本,同时在基于重播的培训期间将不同的类进一步进一步分开。总体而言,我们观察到我们所提出的SCR基本上减少了灾难性的遗忘,并且优于最先进的CL方法,通过各种数据集的重要余量。

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