English

Towards Understanding Adversarial Examples Systematically: Exploring Data Size, Task and Model Factors

Machine Learning 2019-03-01 v1 Machine Learning

Abstract

Most previous works usually explained adversarial examples from several specific perspectives, lacking relatively integral comprehension about this problem. In this paper, we present a systematic study on adversarial examples from three aspects: the amount of training data, task-dependent and model-specific factors. Particularly, we show that adversarial generalization (i.e. test accuracy on adversarial examples) for standard training requires more data than standard generalization (i.e. test accuracy on clean examples); and uncover the global relationship between generalization and robustness with respect to the data size especially when data is augmented by generative models. This reveals the trade-off correlation between standard generalization and robustness in limited training data regime and their consistency when data size is large enough. Furthermore, we explore how different task-dependent and model-specific factors influence the vulnerability of deep neural networks by extensive empirical analysis. Relevant recommendations on defense against adversarial attacks are provided as well. Our results outline a potential path towards the luminous and systematic understanding of adversarial examples.

Keywords

Cite

@article{arxiv.1902.11019,
  title  = {Towards Understanding Adversarial Examples Systematically: Exploring Data Size, Task and Model Factors},
  author = {Ke Sun and Zhanxing Zhu and Zhouchen Lin},
  journal= {arXiv preprint arXiv:1902.11019},
  year   = {2019}
}
R2 v1 2026-06-23T07:54:04.162Z