Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Head2Toe: Utilizing Intermediate Representations for Better Transfer Learning

About

Transfer-learning methods aim to improve performance in a data-scarce target domain using a model pretrained on a data-rich source domain. A cost-efficient strategy, linear probing, involves freezing the source model and training a new classification head for the target domain. This strategy is outperformed by a more costly but state-of-the-art method -- fine-tuning all parameters of the source model to the target domain -- possibly because fine-tuning allows the model to leverage useful information from intermediate layers which is otherwise discarded by the later pretrained layers. We explore the hypothesis that these intermediate layers might be directly exploited. We propose a method, Head-to-Toe probing (Head2Toe), that selects features from all layers of the source model to train a classification head for the target-domain. In evaluations on the VTAB-1k, Head2Toe matches performance obtained with fine-tuning on average while reducing training and storage cost hundred folds or more, but critically, for out-of-distribution transfer, Head2Toe outperforms fine-tuning.

Utku Evci, Vincent Dumoulin, Hugo Larochelle, Michael C. Mozer• 2022

Related benchmarks

TaskDatasetResultRank
Image ClassificationVTAB 1k (test)
Accuracy (Natural)80.2
121
Image ClassificationVTAB-1K 1.0 (test)
Natural Accuracy68.9
102
Showing 2 of 2 rows

Other info

Follow for update