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When resampling/reweighting improves feature learning in imbalanced classification?: A toy-model study

Machine Learning 2025-04-23 v2 Disordered Systems and Neural Networks Information Theory Machine Learning math.IT

Abstract

A toy model of binary classification is studied with the aim of clarifying the class-wise resampling/reweighting effect on the feature learning performance under the presence of class imbalance. In the analysis, a high-dimensional limit of the input space is taken while keeping the ratio of the dataset size against the input dimension finite and the non-rigorous replica method from statistical mechanics is employed. The result shows that there exists a case in which the no resampling/reweighting situation gives the best feature learning performance irrespectively of the choice of losses or classifiers, supporting recent findings in Cao et al. (2019); Kang et al. (2019). It is also revealed that the key of the result is the symmetry of the loss and the problem setting. Inspired by this, we propose a further simplified model exhibiting the same property in the multiclass setting. These clarify when the class-wise resampling/reweighting becomes effective in imbalanced classification.

Keywords

Cite

@article{arxiv.2409.05598,
  title  = {When resampling/reweighting improves feature learning in imbalanced classification?: A toy-model study},
  author = {Tomoyuki Obuchi and Toshiyuki Tanaka},
  journal= {arXiv preprint arXiv:2409.05598},
  year   = {2025}
}

Comments

33 pages, 14 figures

R2 v1 2026-06-28T18:38:29.954Z