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An Effective Flow-based Method for Positive-Unlabeled Learning: 2-HNC

Machine Learning 2025-11-04 v2

Abstract

In many scenarios of binary classification, only positive instances are provided in the training data, leaving the rest of the data unlabeled. This setup, known as positive-unlabeled (PU) learning, is addressed here with a network flow-based method which utilizes pairwise similarities between samples. The method we propose here, 2-HNC, leverages Hochbaum's Normalized Cut (HNC) and the set of solutions it provides by solving a parametric minimum cut problem. The set of solutions, that are nested partitions of the samples into two sets, correspond to varying tradeoff values between the two goals: high intra-similarity inside the sets and low inter-similarity between the two sets. This nested sequence is utilized here to deliver a ranking of unlabeled samples by their likelihood of being negative. Building on this insight, our method, 2-HNC, proceeds in two stages. The first stage generates this ranking without assuming any negative labels, using a problem formulation that is constrained only on positive labeled samples. The second stage augments the positive set with likely-negative samples and recomputes the classification. The final label prediction selects among all generated partitions in both stages, the one that delivers a positive class proportion, closest to a prior estimate of this quantity, which is assumed to be given. Extensive experiments across synthetic and real datasets show that 2-HNC yields strong performance and often surpasses existing state-of-the-art algorithms.

Keywords

Cite

@article{arxiv.2505.08212,
  title  = {An Effective Flow-based Method for Positive-Unlabeled Learning: 2-HNC},
  author = {Dorit Hochbaum and Torpong Nitayanont},
  journal= {arXiv preprint arXiv:2505.08212},
  year   = {2025}
}
R2 v1 2026-06-28T23:30:48.512Z