Gradient-Discrepancy Acquisition for Pool-Based Active Learning
Machine Learning
2026-05-18 v2
Abstract
The effectiveness of active learning hinges on the choice of the acquisition criterion by which a learning algorithm selects potentially informative data points whose label is subsequently queried. This paper proposes a novel gradient-based acquisition criterion, derived from a generalization bound introduced by Luo et al. (2022). This criterion can be applied in lieu of uncertainty measures in uncertainty sampling, or incorporated into diversity-based methods that consider the spread of sampled points in addition to the uncertainty of their labels. We provide a theoretical justification of the proposed acquisition criterion, and demonstrate its effectiveness in an empirical evaluation.
Cite
@article{arxiv.2605.02609,
title = {Gradient-Discrepancy Acquisition for Pool-Based Active Learning},
author = {Mohamadsadegh Khosravani and Sandra Zilles},
journal= {arXiv preprint arXiv:2605.02609},
year = {2026}
}