Poster
FairViT: Fair Vision Transformer via Adaptive Masking
Bowei Tian · Ruijie Du · Yanning Shen
# 336
Strong Double Blind |
Vision Transformer (ViT) has achieved excellent performance and demonstrated its promising potential in various computer vision tasks. The wide deployment of ViT in real-world tasks requires a thorough understanding of the societal impact of the model. However, most ViT-based works do not take fairness into account and it is unclear whether directly applying CNN-oriented debiased algorithm to ViT is feasible. Moreover, previous works typically sacrifice accuracy for fairness. Therefore, we aim to develop an algorithm that improves accuracy without sacrificing fairness. In this paper, we propose FairViT, a novel fair ViT framework. To this end, we introduce a novel distance loss and deploy adaptive fairness-aware masks on attention layers updating with model parameters. Experimental results show FairViT can achieve accuracy better than other alternatives, even with competitive computational efficiency. Furthermore, FairViT achieves appreciable fairness results.
Live content is unavailable. Log in and register to view live content