Re-Evaluating Continual Learning with Few-Shot Adaptation 文章

ArXiv CS.AI2026-06-03NEWSen作者: Amogh Inamdar, Matthew So, Vici Milenia, Richard Zemel

摘要

arXiv:2606.03843v1 Announce Type: cross Abstract: Continual learning methods aim to maximize the stability and plasticity of machine learning models that are trained on a sequence of tasks. The standard measure of stability (i.e., forgetting) is the 0-shot performance of a model on previously learned tasks, and plasticity, the performance on the most recently learned task. However, 0-shot evaluation does not fully measure a model or method's ability to retain learned information or adapt quickly to new information, as it requires perfect recall across multiple tasks. In this paper, we propose few-shot evaluation as a more comprehensive assessment of the stability and plasticity of a continual learning system. We conduct a fine-grained assessment on task sequences for continual image classification and find that this paradigm produces novel insights into the performance of popular continual learning strategies.

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Re-Evaluating Continual Learning with Few-Shot Adaptation
2026-06-03PRODUCT_LAUNCH影响: MEDIUM

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