通过知识整合进行课堂增量学习

Marcus Vinícius de Carvalho, Mahardhika Pratama, Jie Zhang, Yajuan San
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引用次数: 2

摘要

灾难性遗忘一直是阻碍深度学习算法在持续学习环境中部署的一个重要问题。人们提出了许多方法来解决灾难性遗忘问题,即智能体在学习新任务时失去了对旧任务的泛化能力。我们提出了一种利用知识合并(CFA)来处理灾难性遗忘的替代策略,该策略从多个专攻先前任务的异构教师模型中学习学生网络,并可应用于当前的离线方法。知识合并过程以单头方式进行,只有选定数量的记忆样本,没有注释。教师和学生不需要共享相同的网络结构,允许异构任务适应紧凑或稀疏的数据表示。我们将我们的方法与来自不同策略的竞争性基线进行比较,展示了我们方法的优势。
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Class-Incremental Learning via Knowledge Amalgamation
Catastrophic forgetting has been a significant problem hindering the deployment of deep learning algorithms in the continual learning setting. Numerous methods have been proposed to address the catastrophic forgetting problem where an agent loses its generalization power of old tasks while learning new tasks. We put forward an alternative strategy to handle the catastrophic forgetting with knowledge amalgamation (CFA), which learns a student network from multiple heterogeneous teacher models specializing in previous tasks and can be applied to current offline methods. The knowledge amalgamation process is carried out in a single-head manner with only a selected number of memorized samples and no annotations. The teachers and students do not need to share the same network structure, allowing heterogeneous tasks to be adapted to a compact or sparse data representation. We compare our method with competitive baselines from different strategies, demonstrating our approach's advantages.
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