AI RESEARCH
On The Application of Linear Attention in Multimodal Transformers
arXiv CS.CV
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ArXi:2604.10064v1 Announce Type: new 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.