Title
Understanding Adversarial Training: Increasing Local Stability of Neural Nets through Robust Optimization.
Abstract
We propose a general framework for increasing local stability of Artificial Neural Nets (ANNs) using Robust Optimization (RO). We achieve this through an alternating minimization-maximization procedure, in which the loss of the network is minimized over perturbed examples that are generated at each parameter update. We show that adversarial training of ANNs is in fact robustification of the network optimization, and that our proposed framework generalizes previous approaches for increasing local stability of ANNs. Experimental results reveal that our approach increases the robustness of the network to existing adversarial examples, while making it harder to generate new ones. Furthermore, our algorithm improves the accuracy of the network also on the original test data.
Year
Venue
DocType
2015
CoRR
Journal
Volume
Citations 
PageRank 
abs/1511.05432
45
3.38
References 
Authors
16
3
Name
Order
Citations
PageRank
Uri Shaham1504.76
Yutaro Yamada2635.51
Sahand N. Negahban351828.89