cs.AI updates on arXiv.org 10月21日 12:27
DGCL模型:适应动态环境下的持续学习
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本文提出了一种名为领域泛化持续学习(DGCL)的新模型,旨在解决动态环境中智能系统持续学习和泛化到不同领域的问题。通过引入自适应领域转换(DoT)方法,有效处理语义和领域相关信息,实现跨领域的泛化预测。

arXiv:2510.16914v1 Announce Type: cross Abstract: To adapt effectively to dynamic real-world environments, intelligent systems must continually acquire new skills while generalizing them to diverse, unseen scenarios. Here, we introduce a novel and realistic setting named domain generalizable continual learning (DGCL): a model learns sequential tasks with each involving a single domain, aiming to perform well across all encountered tasks and domains. This setting poses unique challenges in acquiring, retaining, and leveraging both semantic- and domain-relevant information for robust generalization. Although state-of-the-art continual learning (CL) methods have employed pre-trained models (PTMs) to enhance task-specific generalization, they typically assume identical training and testing domains for each task and therefore perform poorly in DGCL. To this end, we propose adaptive Domain Transformation (DoT), an innovative PTMs-based approach tailored to DGCL. Inspired by the distributed-plus-hub theory of the human brain, DoT disentangles semantic- and domain-relevant information in representation learning, and adaptively transforms task representations across various domains for output alignment, ensuring balanced and generalized predictions. DoT serves as a plug-in strategy that greatly facilitates state-of-the-art CL baselines under both full parameter tuning and parameter-efficient tuning paradigms in DGCL, validated by extensive experiments. Also, DoT is shown to accumulate domain-generalizable knowledge from DGCL, and ensure resource efficiency with a lightweight implementation.

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领域泛化持续学习 自适应领域转换 持续学习 智能系统 泛化预测
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