REDUCR: Robust Data Downsampling Using Class Priority Reweighting
Abstract
Modern machine learning models are becoming increasingly expensive to train for real-world image and text classification tasks, where massive web-scale data is collected in a streaming fashion. To reduce the training cost, online batch selection techniques have been developed to choose the most informative datapoints. However, these techniques can suffer from poor worst-class generalization performance due to class imbalance and distributional shifts. This work introduces REDUCR, a robust and efficient data downsampling method that uses class priority reweighting. REDUCR reduces the training data while preserving worst-class generalization performance. REDUCR assigns priority weights to datapoints in a class-aware manner using an online learning algorithm. We demonstrate the data efficiency and robust performance of REDUCR on vision and text classification tasks. On web-scraped datasets with imbalanced class distributions, REDUCR significantly improves worst-class test accuracy (and average accuracy), surpassing state-of-the-art methods by around 15%.
Cite
@article{arxiv.2312.00486,
title = {REDUCR: Robust Data Downsampling Using Class Priority Reweighting},
author = {William Bankes and George Hughes and Ilija Bogunovic and Zi Wang},
journal= {arXiv preprint arXiv:2312.00486},
year = {2024}
}
Comments
Preprint