Geometric Median Matching for Robust Data Pruning

Abstract

Large-scale data collections in the wild, are invariably noisy. Thus developing data pruning strategies that remain robust even in the presence of corruption is critical in practice. In this work, we propose Geometric Median ($\gm$) Matching -- a herding style greedy algorithm that yields a $k$-subset such that the mean of the subset approximates the geometric median of the (potentially) noisy dataset. Theoretically, we show that $\gm$ Matching enjoys an improved $\gO(1/k)$ scaling over $\gO(1/\sqrt{k})$ scaling of uniform sampling; while achieving {\bf optimal breakdown point} of {\bf 1/2} even under {\bf arbitrary} corruption. Extensive experiments across several popular deep learning benchmarks indicate that $\gm$ Matching consistently improves over prior state-of-the-art; the gains become more profound at high rates of corruption and aggressive pruning rates; making $\gm$ Matching a strong baseline for future research in robust data pruning.

Cite

Text

Acharya et al. "Geometric Median Matching for Robust Data Pruning." ICML 2024 Workshops: FM-Wild, 2024.

Markdown

[Acharya et al. "Geometric Median Matching for Robust Data Pruning." ICML 2024 Workshops: FM-Wild, 2024.](https://mlanthology.org/icmlw/2024/acharya2024icmlw-geometric/)

BibTeX

@inproceedings{acharya2024icmlw-geometric,
  title     = {{Geometric Median Matching for Robust Data Pruning}},
  author    = {Acharya, Anish and Dhillon, Inderjit S and Sanghavi, Sujay},
  booktitle = {ICML 2024 Workshops: FM-Wild},
  year      = {2024},
  url       = {https://mlanthology.org/icmlw/2024/acharya2024icmlw-geometric/}
}