SeTformer Is What You Need for Vision and Language

Authors

  • Pourya Shamsolmoali East China Normal University
  • Masoumeh Zareapoor Shanghai Jiao Tong University
  • Eric Granger ETS Montreal
  • Michael Felsberg Linköping University

DOI:

https://doi.org/10.1609/aaai.v38i5.28272

Keywords:

CV: Language and Vision, CV: Learning & Optimization for CV

Abstract

The dot product self-attention (DPSA) is a fundamental component of transformers. However, scaling them to long sequences, like documents or high-resolution images, becomes prohibitively expensive due to the quadratic time and memory complexities arising from the softmax operation. Kernel methods are employed to simplify computations by approximating softmax but often lead to performance drops compared to softmax attention. We propose SeTformer, a novel transformer where DPSA is purely replaced by Self-optimal Transport (SeT) for achieving better performance and computational efficiency. SeT is based on two essential softmax properties: maintaining a non-negative attention matrix and using a nonlinear reweighting mechanism to emphasize important tokens in input sequences. By introducing a kernel cost function for optimal transport, SeTformer effectively satisfies these properties. In particular, with small and base-sized models, SeTformer achieves impressive top-1 accuracies of 84.7% and 86.2% on ImageNet-1K. In object detection, SeTformer-base outperforms the FocalNet counterpart by +2.2 mAP, using 38% fewer parameters and 29% fewer FLOPs. In semantic segmentation, our base-size model surpasses NAT by +3.5 mIoU with 33% fewer parameters. SeTformer also achieves state-of-the-art results in language modeling on the GLUE benchmark. These findings highlight SeTformer applicability for vision and language tasks.

Published

2024-03-24

How to Cite

Shamsolmoali, P., Zareapoor, M., Granger, E., & Felsberg, M. (2024). SeTformer Is What You Need for Vision and Language. Proceedings of the AAAI Conference on Artificial Intelligence, 38(5), 4713–4721. https://doi.org/10.1609/aaai.v38i5.28272

Issue

Section

AAAI Technical Track on Computer Vision IV