AI RESEARCH
Restoring Neural Network Plasticity for Faster Transfer Learning
arXiv CS.AI
•
ArXi:2603.20860v1 Announce Type: cross Transfer learning with models pretrained on ImageNet has become a standard practice in computer vision. Transfer learning refers to fine-tuning pretrained weights of a neural network on a downstream task, typically unrelated to ImageNet. However, pretrained weights can become saturated and may yield insignificant gradients, failing to adapt to the downstream task. This hinders the ability of the model to train effectively, and is commonly referred to as loss of neural plasticity.