A$_3$B$_2$: Adaptive Asymmetric Adapter for Alleviating Branch Bias in Vision-Language Image Classification with Few-Shot Learning
About
Efficient transfer learning methods for large-scale vision-language models ($e.g.$, CLIP) enable strong few-shot transfer, yet existing adaptation methods follow a fixed fine-tuning paradigm that implicitly assumes a uniform importance of the image and text branches, which has not been systematically studied in image classification. Through extensive analysis, we reveal a Branch Bias issue in vision-language image classification: adapting the image encoder does not always improve performance under out-of-distribution settings. Motivated by this observation, we propose A$_3$B$_2$, an Adaptive Asymmetric Adapter that alleviates Branch Bias in few-shot learning. A$_3$B$_2$ introduces Uncertainty-Aware Adapter Dampening (UAAD), which automatically suppresses image-branch adaptation when prediction uncertainty is high, enabling soft and data-driven control without manual intervention. Architecturally, A$_3$B$_2$ adopts a lightweight asymmetric design inspired by mixture-of-experts with Load Balancing Regularization. Extensive experiments on three few-shot image classification tasks across 11 datasets demonstrate that A$_3$B$_2$ consistently outperforms 11 competitive prompt- and adapter-based baselines.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | ImageNet V2 | -- | 749 | |
| Image Classification | ImageNet-R | -- | 581 | |
| Image Classification | UCF101 | Top-1 Acc69.43 | 527 | |
| Image Classification | StanfordCars | Accuracy65.32 | 384 | |
| Image Classification | OxfordPets | Accuracy91.36 | 298 | |
| Image Classification | FGVCAircraft | Accuracy24.53 | 289 | |
| Image Classification | OxfordPets | H Score96.66 | 182 | |
| Image Classification | Food101 | Accuracy86.75 | 177 | |
| Image Classification | UCF101 | Base Classes Acc86.49 | 139 | |
| Image Classification | SUN397 | Accuracy67.15 | 116 |