Adversarial Training with Generated Data in High-Dimensional Regression: An Asymptotic Study
Machine Learning
2023-06-23 v1 Machine Learning
Abstract
In recent years, studies such as \cite{carmon2019unlabeled,gowal2021improving,xing2022artificial} have demonstrated that incorporating additional real or generated data with pseudo-labels can enhance adversarial training through a two-stage training approach. In this paper, we perform a theoretical analysis of the asymptotic behavior of this method in high-dimensional linear regression. While a double-descent phenomenon can be observed in ridgeless training, with an appropriate regularization, the two-stage adversarial training achieves a better performance. Finally, we derive a shortcut cross-validation formula specifically tailored for the two-stage training method.
Cite
@article{arxiv.2306.12582,
title = {Adversarial Training with Generated Data in High-Dimensional Regression: An Asymptotic Study},
author = {Yue Xing},
journal= {arXiv preprint arXiv:2306.12582},
year = {2023}
}