Researchers have developed an Adaptive Hebbian Routing method for few-shot Vision Transformers to improve image recognition from limited data. This approach uses a lightweight MLP router to dynamically control Hebbian memory contributions, update strengths, and retention of previous memory. Experiments on various backbones and datasets demonstrated that adaptive variants enhance performance and reduce inference time compared to fixed Hebbian methods, showing the benefit of adaptive plasticity and memory activation. AI
IMPACT Improves efficiency and accuracy of image recognition models trained on limited datasets.
RANK_REASON The cluster contains a research paper detailing a new method for few-shot learning in computer vision.
- Adaptive Hebbian Routing
- CIFAR-FS
- DeiT-Small
- Few-shot Learning
- Hebbian memory
- MLP router
- Mohammed Yusuf Mujawar
- Omniglot
- Swin-Tiny
- Vision Transformers
- ViT-Small
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