cs.AI updates on arXiv.org 07月29日
Regularizing Subspace Redundancy of Low-Rank Adaptation
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本文提出ReSoRA方法,通过建模映射子空间间的冗余并自适应调节低秩自适应的子空间冗余,有效提升参数高效迁移学习(PETL)的性能,实验证明其在视觉语言检索和视觉分类基准测试中优于现有方法。

arXiv:2507.20745v1 Announce Type: cross Abstract: Low-Rank Adaptation (LoRA) and its variants have delivered strong capability in Parameter-Efficient Transfer Learning (PETL) by minimizing trainable parameters and benefiting from reparameterization. However, their projection matrices remain unrestricted during training, causing high representation redundancy and diminishing the effectiveness of feature adaptation in the resulting subspaces. While existing methods mitigate this by manually adjusting the rank or implicitly applying channel-wise masks, they lack flexibility and generalize poorly across various datasets and architectures. Hence, we propose ReSoRA, a method that explicitly models redundancy between mapping subspaces and adaptively Regularizes Subspace redundancy of Low-Rank Adaptation. Specifically, it theoretically decomposes the low-rank submatrices into multiple equivalent subspaces and systematically applies de-redundancy constraints to the feature distributions across different projections. Extensive experiments validate that our proposed method consistently facilitates existing state-of-the-art PETL methods across various backbones and datasets in vision-language retrieval and standard visual classification benchmarks. Besides, as a training supervision, ReSoRA can be seamlessly integrated into existing approaches in a plug-and-play manner, with no additional inference costs. Code is publicly available at: https://github.com/Lucenova/ReSoRA.

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低秩自适应 参数高效迁移学习 特征适配 ReSoRA 视觉分类
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