On Adversarial Examples for Character-Level Neural Machine Translation
Abstract
Evaluating on adversarial examples has become a standard procedure to measure robustness of deep learning models. Due to the difficulty of creating white-box adversarial examples for discrete text input, most analyses of the robustness of NLP models have been done through black-box adversarial examples. We investigate adversarial examples for character-level neural machine translation (NMT), and contrast black-box adversaries with a novel white-box adversary, which employs differentiable string-edit operations to rank adversarial changes. We propose two novel types of attacks which aim to remove or change a word in a translation, rather than simply break the NMT. We demonstrate that white-box adversarial examples are significantly stronger than their black-box counterparts in different attack scenarios, which show more serious vulnerabilities than previously known. In addition, after performing adversarial training, which takes only 3 times longer than regular training, we can improve the model's robustness significantly.
Cite
@article{arxiv.1806.09030,
title = {On Adversarial Examples for Character-Level Neural Machine Translation},
author = {Javid Ebrahimi and Daniel Lowd and Dejing Dou},
journal= {arXiv preprint arXiv:1806.09030},
year = {2018}
}