English

Project and Probe: Sample-Efficient Domain Adaptation by Interpolating Orthogonal Features

Machine Learning 2023-05-26 v2 Artificial Intelligence

Abstract

Transfer learning with a small amount of target data is an effective and common approach to adapting a pre-trained model to distribution shifts. In some situations, target data labels may be expensive to obtain, so we may only have access to a limited number of target data points. To make the most of a very small target dataset, we propose a lightweight, sample-efficient approach that learns a diverse set of features and adapts to a target distribution by interpolating these features. Our approach, Project and Probe (Pro2^2), first learns a linear projection that maps a pre-trained embedding onto orthogonal directions while being predictive of labels in the source dataset. The goal of this step is to learn a variety of predictive features, so that at least some of them remain useful after distribution shift. Pro2^2 then learns a linear classifier on top of these projected features using a small target dataset. Theoretically, we find that Pro2^2 results in more sample-efficient generalization by inducing a favorable bias-variance tradeoff. Our experiments on four datasets, with multiple distribution shift settings for each, show that Pro2^2 improves performance by 5-15% when given limited target data compared to prior methods such as standard linear probing.

Keywords

Cite

@article{arxiv.2302.05441,
  title  = {Project and Probe: Sample-Efficient Domain Adaptation by Interpolating Orthogonal Features},
  author = {Annie S. Chen and Yoonho Lee and Amrith Setlur and Sergey Levine and Chelsea Finn},
  journal= {arXiv preprint arXiv:2302.05441},
  year   = {2023}
}

Comments

22 pages, 9 figures

R2 v1 2026-06-28T08:37:20.633Z