A Comprehensive Survey of Forgetting in Deep Learning Beyond Continual Learning

Zhenyi Wang;Enneng Yang;Li Shen;Heng Huang
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Abstract

Forgetting refers to the loss or deterioration of previously acquired knowledge. While existing surveys on forgetting have primarily focused on continual learning, forgetting is a prevalent phenomenon observed in various other research domains within deep learning. Forgetting manifests in research fields such as generative models due to generator shifts, and federated learning due to heterogeneous data distributions across clients. Addressing forgetting encompasses several challenges, including balancing the retention of old task knowledge with fast learning of new task, managing task interference with conflicting goals, and preventing privacy leakage, etc. Moreover, most existing surveys on continual learning implicitly assume that forgetting is always harmful. In contrast, our survey argues that forgetting is a double-edged sword and can be beneficial and desirable in certain cases, such as privacy-preserving scenarios. By exploring forgetting in a broader context, we present a more nuanced understanding of this phenomenon and highlight its potential advantages. Through this comprehensive survey, we aspire to uncover potential solutions by drawing upon ideas and approaches from various fields that have dealt with forgetting. By examining forgetting beyond its conventional boundaries, we hope to encourage the development of novel strategies for mitigating, harnessing, or even embracing forgetting in real applications.
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持续学习之外深度学习中的遗忘综合调查
遗忘是指先前获得的知识的丧失或退化。虽然现有的关于遗忘的调查主要集中在持续学习上,但在深度学习的其他研究领域中,遗忘是一种普遍现象。遗忘表现在研究领域,如由于生成器移位而产生的生成模型,以及由于跨客户端异构数据分布而产生的联邦学习。解决遗忘涉及几个挑战,包括平衡旧任务知识的保留与新任务的快速学习,管理任务干扰与冲突的目标,防止隐私泄露等。此外,大多数现有的关于持续学习的调查隐含地假设遗忘总是有害的。相反,我们的调查认为,遗忘是一把双刃剑,在某些情况下可能是有益的,也是可取的,比如在保护隐私的情况下。通过在更广泛的背景下探索遗忘,我们对这一现象有了更细致的理解,并强调了它的潜在优势。通过这项全面的调查,我们希望通过借鉴不同领域处理遗忘的想法和方法来发现潜在的解决方案。通过研究超越传统界限的遗忘,我们希望鼓励在实际应用中减轻、控制甚至拥抱遗忘的新策略的发展。
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