English

Epsilon Consistent Mixup: Structural Regularization with an Adaptive Consistency-Interpolation Tradeoff

Machine Learning 2021-10-01 v2 Machine Learning Applications Methodology

Abstract

In this paper we propose ϵ\epsilon-Consistent Mixup (ϵ\epsilonmu). ϵ\epsilonmu is a data-based structural regularization technique that combines Mixup's linear interpolation with consistency regularization in the Mixup direction, by compelling a simple adaptive tradeoff between the two. This learnable combination of consistency and interpolation induces a more flexible structure on the evolution of the response across the feature space and is shown to improve semi-supervised classification accuracy on the SVHN and CIFAR10 benchmark datasets, yielding the largest gains in the most challenging low label-availability scenarios. Empirical studies comparing ϵ\epsilonmu and Mixup are presented and provide insight into the mechanisms behind ϵ\epsilonmu's effectiveness. In particular, ϵ\epsilonmu is found to produce more accurate synthetic labels and more confident predictions than Mixup.

Cite

@article{arxiv.2104.09452,
  title  = {Epsilon Consistent Mixup: Structural Regularization with an Adaptive Consistency-Interpolation Tradeoff},
  author = {Vincent Pisztora and Yanglan Ou and Xiaolei Huang and Francesca Chiaromonte and Jia Li},
  journal= {arXiv preprint arXiv:2104.09452},
  year   = {2021}
}
R2 v1 2026-06-24T01:20:18.265Z