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Autori principali: Li, Ruibang, Luo, Guan, Zhang, Yiwei, Gao, Jin, Li, Bing, Hu, Weiming
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.11164
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author Li, Ruibang
Luo, Guan
Zhang, Yiwei
Gao, Jin
Li, Bing
Hu, Weiming
author_facet Li, Ruibang
Luo, Guan
Zhang, Yiwei
Gao, Jin
Li, Bing
Hu, Weiming
contents Standard softmax self-attention excels in vision tasks but incurs quadratic complexity O(N^2), limiting high-resolution deployment. Linear attention reduces the cost to O(N), yet its compressed state representations can impair modeling capacity and accuracy. We present an analytical study that contrasts linear and softmax attention for visual representation learning from a layer-stacking perspective. We further conduct systematic experiments on layer-wise hybridization patterns of linear and softmax attention. Our results show that, compared with rigid intra-block hybrid designs, fine-grained layer-wise hybridization can match or surpass performance while requiring fewer softmax layers. Building on these findings, we propose SoLA-Vision (Softmax-Linear Attention Vision), a flexible layer-wise hybrid attention backbone that enables fine-grained control over how linear and softmax attention are integrated. By strategically inserting a small number of global softmax layers, SoLA-Vision achieves a strong trade-off between accuracy and computational cost. On ImageNet-1K, SoLA-Vision outperforms purely linear and other hybrid attention models. On dense prediction tasks, it consistently surpasses strong baselines by a considerable margin. Code will be released.
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spellingShingle SoLA-Vision: Fine-grained Layer-wise Linear Softmax Hybrid Attention
Li, Ruibang
Luo, Guan
Zhang, Yiwei
Gao, Jin
Li, Bing
Hu, Weiming
Computer Vision and Pattern Recognition
Standard softmax self-attention excels in vision tasks but incurs quadratic complexity O(N^2), limiting high-resolution deployment. Linear attention reduces the cost to O(N), yet its compressed state representations can impair modeling capacity and accuracy. We present an analytical study that contrasts linear and softmax attention for visual representation learning from a layer-stacking perspective. We further conduct systematic experiments on layer-wise hybridization patterns of linear and softmax attention. Our results show that, compared with rigid intra-block hybrid designs, fine-grained layer-wise hybridization can match or surpass performance while requiring fewer softmax layers. Building on these findings, we propose SoLA-Vision (Softmax-Linear Attention Vision), a flexible layer-wise hybrid attention backbone that enables fine-grained control over how linear and softmax attention are integrated. By strategically inserting a small number of global softmax layers, SoLA-Vision achieves a strong trade-off between accuracy and computational cost. On ImageNet-1K, SoLA-Vision outperforms purely linear and other hybrid attention models. On dense prediction tasks, it consistently surpasses strong baselines by a considerable margin. Code will be released.
title SoLA-Vision: Fine-grained Layer-wise Linear Softmax Hybrid Attention
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.11164