English

Unifying Adversarial Training Algorithms with Flexible Deep Data Gradient Regularization

Machine Learning 2016-08-01 v3 Neural and Evolutionary Computing

Abstract

Many previous proposals for adversarial training of deep neural nets have included di- rectly modifying the gradient, training on a mix of original and adversarial examples, using contractive penalties, and approximately optimizing constrained adversarial ob- jective functions. In this paper, we show these proposals are actually all instances of optimizing a general, regularized objective we call DataGrad. Our proposed DataGrad framework, which can be viewed as a deep extension of the layerwise contractive au- toencoder penalty, cleanly simplifies prior work and easily allows extensions such as adversarial training with multi-task cues. In our experiments, we find that the deep gra- dient regularization of DataGrad (which also has L1 and L2 flavors of regularization) outperforms alternative forms of regularization, including classical L1, L2, and multi- task, both on the original dataset as well as on adversarial sets. Furthermore, we find that combining multi-task optimization with DataGrad adversarial training results in the most robust performance.

Keywords

Cite

@article{arxiv.1601.07213,
  title  = {Unifying Adversarial Training Algorithms with Flexible Deep Data Gradient Regularization},
  author = {Alexander G. Ororbia and C. Lee Giles and Daniel Kifer},
  journal= {arXiv preprint arXiv:1601.07213},
  year   = {2016}
}
R2 v1 2026-06-22T12:37:26.826Z