What Would Gauss Say About Representations? Probing Pretrained Image Models Using Synthetic Gaussian Benchmarks

Abstract

Recent years have witnessed a paradigm shift in deep learning from task-centric model design to task-agnostic representation learning and task-specific fine-tuning. Pretrained model representations are commonly evaluated extensively across various real-world tasks and used as a foundation for different downstream tasks. This paper proposes a solution for assessing the quality of representations in a task-agnostic way. To circumvent the need for real-world data in evaluation, we explore the use of synthetic binary classification tasks with Gaussian mixtures to probe pretrained models and compare the robustness-accuracy performance on pretrained representations with an idealized reference. Our approach offers a holistic evaluation, revealing intrinsic model capabilities and reducing the dependency on real-life data for model evaluation. Evaluated with various pretrained image models, the experimental results confirm that our task-agnostic evaluation correlates with actual linear probing performance on downstream tasks and can also guide parameter choice in robust linear probing to achieve a better robustness-accuracy trade-off.

Cite

Text

Ko et al. "What Would Gauss Say About Representations? Probing Pretrained Image Models Using Synthetic Gaussian Benchmarks." International Conference on Machine Learning, 2024.

Markdown

[Ko et al. "What Would Gauss Say About Representations? Probing Pretrained Image Models Using Synthetic Gaussian Benchmarks." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/ko2024icml-gauss/)

BibTeX

@inproceedings{ko2024icml-gauss,
  title     = {{What Would Gauss Say About Representations? Probing Pretrained Image Models Using Synthetic Gaussian Benchmarks}},
  author    = {Ko, Ching-Yun and Chen, Pin-Yu and Das, Payel and Mohapatra, Jeet and Daniel, Luca},
  booktitle = {International Conference on Machine Learning},
  year      = {2024},
  pages     = {24829-24858},
  volume    = {235},
  url       = {https://mlanthology.org/icml/2024/ko2024icml-gauss/}
}