cs.AI updates on arXiv.org 10月21日 12:14
LS-OGD:应对概念漂移的多模态学习新框架
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本文提出LS-OGD,一种用于非平稳环境下概念漂移的多模态学习自适应控制框架,通过动态调整学习率和融合权重,确保系统鲁棒性和容错性。

arXiv:2510.15944v1 Announce Type: cross Abstract: Multimodal learning systems often struggle in non-stationary environments due to concept drift, where changing data distributions can degrade performance. Modality-specific drifts and the lack of mechanisms for continuous, stable adaptation compound this challenge. This paper introduces LS-OGD, a novel adaptive control framework for robust multimodal learning in the presence of concept drift. LS-OGD uses an online controller that dynamically adjusts the model's learning rate and the fusion weights between different data modalities in response to detected drift and evolving prediction errors. We prove that under bounded drift conditions, the LS-OGD system's prediction error is uniformly ultimately bounded and converges to zero if the drift ceases. Additionally, we demonstrate that the adaptive fusion strategy effectively isolates and mitigates the impact of severe modality-specific drift, thereby ensuring system resilience and fault tolerance. These theoretical guarantees establish a principled foundation for developing reliable and continuously adapting multimodal learning systems.

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多模态学习 概念漂移 自适应控制 LS-OGD 鲁棒性
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