Fine-Tuning can Distort Pretrained Features and Underperform Out-of-Distribution
About
When transferring a pretrained model to a downstream task, two popular methods are full fine-tuning (updating all the model parameters) and linear probing (updating only the last linear layer -- the "head"). It is well known that fine-tuning leads to better accuracy in-distribution (ID). However, in this paper, we find that fine-tuning can achieve worse accuracy than linear probing out-of-distribution (OOD) when the pretrained features are good and the distribution shift is large. On 10 distribution shift datasets (Breeds-Living17, Breeds-Entity30, DomainNet, CIFAR $\to$ STL, CIFAR10.1, FMoW, ImageNetV2, ImageNet-R, ImageNet-A, ImageNet-Sketch), fine-tuning obtains on average 2% higher accuracy ID but 7% lower accuracy OOD than linear probing. We show theoretically that this tradeoff between ID and OOD accuracy arises even in a simple setting: fine-tuning overparameterized two-layer linear networks. We prove that the OOD error of fine-tuning is high when we initialize with a fixed or random head -- this is because while fine-tuning learns the head, the lower layers of the neural network change simultaneously and distort the pretrained features. Our analysis suggests that the easy two-step strategy of linear probing then full fine-tuning (LP-FT), sometimes used as a fine-tuning heuristic, combines the benefits of both fine-tuning and linear probing. Empirically, LP-FT outperforms both fine-tuning and linear probing on the above datasets (1% better ID, 10% better OOD than full fine-tuning).
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Image Classification | ImageNet 1k (test) | Top-1 Accuracy64.91 | 798 | |
| Image Classification | ImageNet-1K | -- | 524 | |
| Image Classification | Food-101 | -- | 494 | |
| Image Classification | Stanford Cars | Accuracy89.4 | 477 | |
| Image Classification | ImageNet | -- | 429 | |
| Image Classification | DTD | Accuracy66 | 419 | |
| Action Recognition | UCF101 | -- | 365 | |
| Image Classification | SVHN | Accuracy44.08 | 359 | |
| Image Classification | ImageNet (val) | Accuracy81.7 | 300 | |
| Image Classification | Oxford-IIIT Pets | Accuracy81.9 | 259 |