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Replacing softmax with ReLU in Vision Transformers

15 September 2023
Mitchell Wortsman
Jaehoon Lee
Justin Gilmer
Simon Kornblith
    ViT
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Abstract

Previous research observed accuracy degradation when replacing the attention softmax with a point-wise activation such as ReLU. In the context of vision transformers, we find that this degradation is mitigated when dividing by sequence length. Our experiments training small to large vision transformers on ImageNet-21k indicate that ReLU-attention can approach or match the performance of softmax-attention in terms of scaling behavior as a function of compute.

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