cs.AI updates on arXiv.org 07月31日 12:48
RainbowPrompt: Diversity-Enhanced Prompt-Evolving for Continual Learning
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本文提出一种prompt-evolving机制,通过调整少量参数并保持预训练模型冻结,解决持续学习任务中知识整合的问题,有效提高学习新任务的能力。

arXiv:2507.22553v1 Announce Type: cross Abstract: Prompt-based continual learning provides a rehearsal-free solution by tuning small sets of parameters while keeping pre-trained models frozen. To meet the complex demands of sequential tasks, it is crucial to integrate task-specific knowledge within prompts effectively. However, existing works rely on either fixed learned prompts (i.e., prompts whose representations remain unchanged during new task learning) or on prompts generated from an entangled task-shared space, limiting the representational diversity of the integrated prompt. To address this issue, we propose a novel prompt-evolving mechanism to adaptively aggregate base prompts (i.e., task-specific prompts) into a unified prompt while ensuring diversity. By transforming and aligning base prompts, both previously learned and newly introduced, our approach continuously evolves accumulated knowledge to facilitate learning new tasks. We further introduce a learnable probabilistic gate that adaptively determines which layers to activate during the evolution process. We validate our method on image classification and video action recognition tasks in class-incremental learning, achieving average gains of 9.07% and 7.40% over existing methods across all scenarios.

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持续学习 prompt-evolving 知识整合 图像分类 视频动作识别
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