Adversarial Examples Exist in Two-Layer ReLU Networks for Low Dimensional Linear Subspaces
Machine Learning
2023-11-17 v2 Cryptography and Security
Neural and Evolutionary Computing
Machine Learning
Abstract
Despite a great deal of research, it is still not well-understood why trained neural networks are highly vulnerable to adversarial examples. In this work we focus on two-layer neural networks trained using data which lie on a low dimensional linear subspace. We show that standard gradient methods lead to non-robust neural networks, namely, networks which have large gradients in directions orthogonal to the data subspace, and are susceptible to small adversarial -perturbations in these directions. Moreover, we show that decreasing the initialization scale of the training algorithm, or adding regularization, can make the trained network more robust to adversarial perturbations orthogonal to the data.
Cite
@article{arxiv.2303.00783,
title = {Adversarial Examples Exist in Two-Layer ReLU Networks for Low Dimensional Linear Subspaces},
author = {Odelia Melamed and Gilad Yehudai and Gal Vardi},
journal= {arXiv preprint arXiv:2303.00783},
year = {2023}
}
Comments
Camera ready version for NeurIPS 2023