On The Application of Linear Attention in Multimodal Transformers

April 11, 2026 ยท Grace Period ยท ๐Ÿ› CVPR 2026

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Authors Armin Gerami, Seyedehanita Madani, Ramani Duraiswami arXiv ID 2604.10064 Category cs.CV: Computer Vision Citations 0 Venue CVPR 2026
Abstract
Multimodal Transformers serve as the backbone for state-of-the-art vision-language models, yet their quadratic attention complexity remains a critical barrier to scalability. In this work, we investigate the viability of Linear Attention (LA) as a high-efficiency alternative within multimodal frameworks. By integrating LA, we reduce the computational overhead from quadratic to linear relative to sequence length while preserving competitive performance. We evaluate our approach across ViT-S/16, ViT-B/16, and ViT-L/16 architectures trained on the LAION-400M dataset, with validation focused on ImageNet-21K zero-shot accuracy. Our systematic evaluation demonstrates that Linear Attention not only yields significant computational savings but also adheres to the same scaling laws as standard softmax attention. These findings position Linear Attention as a robust, scalable solution for next-generation multimodal Transformers tasked with processing increasingly large and complex datasets.
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