English

Margin-based sampling in high dimensions: When being active is less efficient than staying passive

Machine Learning 2023-06-05 v2

Abstract

It is widely believed that given the same labeling budget, active learning (AL) algorithms like margin-based active learning achieve better predictive performance than passive learning (PL), albeit at a higher computational cost. Recent empirical evidence suggests that this added cost might be in vain, as margin-based AL can sometimes perform even worse than PL. While existing works offer different explanations in the low-dimensional regime, this paper shows that the underlying mechanism is entirely different in high dimensions: we prove for logistic regression that PL outperforms margin-based AL even for noiseless data and when using the Bayes optimal decision boundary for sampling. Insights from our proof indicate that this high-dimensional phenomenon is exacerbated when the separation between the classes is small. We corroborate this intuition with experiments on 20 high-dimensional datasets spanning a diverse range of applications, from finance and histology to chemistry and computer vision.

Keywords

Cite

@article{arxiv.2212.00772,
  title  = {Margin-based sampling in high dimensions: When being active is less efficient than staying passive},
  author = {Alexandru Tifrea and Jacob Clarysse and Fanny Yang},
  journal= {arXiv preprint arXiv:2212.00772},
  year   = {2023}
}
R2 v1 2026-06-28T07:19:49.047Z