中文

Population-Based Multi-Objective Training of Discriminators for Semi-Supervised GANs

机器学习 2026-07-02 v1 人工智能 计算机视觉与模式识别

摘要

Semi-supervised generative adversarial networks (SSL-GANs) can exploit large unlabeled datasets while retaining a classifier in the discriminator, but their training is often unstable. This paper proposes a population-based evolutionary training strategy in which discriminator learning is formulated as a multi-objective optimization problem. Instead of aggregating the supervised and unsupervised components of the SSL objective into a single scalar loss, the method maintains a population of discriminators ranked by Pareto dominance, enabling the exploration of different trade-offs between classification accuracy and real/fake discrimination. This formulation aims to improve both roles of SSL-GANs: learning accurate classifiers and training generators capable of producing realistic samples. We analyze several variants, including an elitist strategy and a mono-objective ablation, to assess the role of multi-objective selection. Experiments on MNIST with limited labels show improved training robustness compared to SSL-GAN and CE-SSL-GAN state-of-the-art baselines, while the elitist variant consistently achieves the highest classification accuracy.

引用

@article{arxiv.2607.01907,
  title  = {Population-Based Multi-Objective Training of Discriminators for Semi-Supervised GANs},
  author = {Francisco Sedeño and Francisco Chicano and Jamal Toutouh},
  journal= {arXiv preprint arXiv:2607.01907},
  year   = {2026}
}

备注

The 2nd International Conference on Federated Learning and Intelligent Computing Systems (FLICS2026)