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Balancing the Scales: A Theoretical and Algorithmic Framework for Learning from Imbalanced Data

Machine Learning 2025-12-30 v3 Machine Learning

Abstract

Class imbalance remains a major challenge in machine learning, especially in multi-class problems with long-tailed distributions. Existing methods, such as data resampling, cost-sensitive techniques, and logistic loss modifications, though popular and often effective, lack solid theoretical foundations. As an example, we demonstrate that cost-sensitive methods are not Bayes-consistent. This paper introduces a novel theoretical framework for analyzing generalization in imbalanced classification. We propose a new class-imbalanced margin loss function for both binary and multi-class settings, prove its strong HH-consistency, and derive corresponding learning guarantees based on empirical loss and a new notion of class-sensitive Rademacher complexity. Leveraging these theoretical results, we devise novel and general learning algorithms, IMMAX (Imbalanced Margin Maximization), which incorporate confidence margins and are applicable to various hypothesis sets. While our focus is theoretical, we also present extensive empirical results demonstrating the effectiveness of our algorithms compared to existing baselines.

Keywords

Cite

@article{arxiv.2502.10381,
  title  = {Balancing the Scales: A Theoretical and Algorithmic Framework for Learning from Imbalanced Data},
  author = {Corinna Cortes and Anqi Mao and Mehryar Mohri and Yutao Zhong},
  journal= {arXiv preprint arXiv:2502.10381},
  year   = {2025}
}

Comments

ICML 2025

R2 v1 2026-06-28T21:44:47.283Z