A Sublinear Adversarial Training Algorithm

27citations
arXiv:2208.05395
27
citations
#778
in ICLR 2024
of 2297 papers
4
Top Authors
4
Data Points

Abstract

Adversarial training is a widely used strategy for making neural networks resistant to adversarial perturbations. For a neural network of width $m$, $n$ input training data in $d$ dimension, it takes $\Omega(mnd)$ time cost per training iteration for the forward and backward computation. In this paper we analyze the convergence guarantee of adversarial training procedure on a two-layer neural network with shifted ReLU activation, and shows that only $o(m)$ neurons will be activated for each input data per iteration. Furthermore, we develop an algorithm for adversarial training with time cost $o(m n d)$ per iteration by applying half-space reporting data structure.

Citation History

Jan 28, 2026
0
Feb 13, 2026
27+27
Feb 13, 2026
27
Feb 13, 2026
27