To imitate the ability of keeping learning of human, continual learning which can learn from a never-ending data stream has attracted more interests recently. In all settings, the online class incremental learning (CIL), where incoming samples from data stream can be used only once, is more challenging and can be encountered more frequently in real world. Actually, the CIL faces a stability-plasticity dilemma, where the stability means the ability to preserve old knowledge while the plasticity denotes the ability to incorporate new knowledge. Although replay-based methods have shown exceptional promise, most of them concentrate on the strategy for updating and retrieving memory to keep stability at the expense of plasticity. To strike a preferable trade-off between stability and plasticity, we propose a Adaptive Focus Shifting algorithm (AFS), which dynamically adjusts focus to ambiguous samples and non-target logits in model learning. Through a deep analysis of the task-recency bias caused by class imbalance, we propose a revised focal loss to mainly keep stability. By utilizing a new weight function, the revised focal loss can pay more attention to current ambiguous samples, which can provide more information of the classification boundary. To promote plasticity, we introduce a virtual knowledge distillation. By designing a virtual teacher, it assigns more attention to non-target classes, which can surmount overconfidence and encourage model to focus on inter-class information. Extensive experiments on three popular datasets for CIL have shown the effectiveness of AFS. The code will be available at \url{https://github.com/czjghost/AFS}.
翻译:模仿人类学习的能力,不断学习能够从永无休止的数据流中学习的人,最近吸引了更多的兴趣。在所有环境中,在线级递增学习(CIL)(CIL)(CIL)(CIL)(从数据流中提取的样本只能使用一次)更具挑战性,在现实世界中可以更频繁地看到。事实上,CIL(CIL)面临一个稳定-塑性难题,稳定意味着保存旧知识的能力,而塑料则意味着吸收新知识的能力。虽然重播方法显示了非凡的希望,但大部分侧重于更新和重新探索记忆以保持稳定性的战略,而牺牲了可塑性。为了在稳定性和可塑性之间达成更好的交换,我们建议采用适应性焦点转换算法(AFS)算法(AFS)(AFS)(AFS)(AFS),在模型学习中动态地调整对模糊性样本和非目标日志的焦点。通过深入分析,我们提议修改焦点损失主要保持稳定性。通过使用新的重量值计算功能,订正的焦点损失可以更加关注当前的模糊性样本,这可以提供虚拟的样本,通过虚拟的校正判分法(AILA/IL)的分解。