Machine learning models are vulnerable to adversarial examples: minor perturbations to input samples intended to deliberately cause misclassification. While an obvious security threat, adversarial examples yield as well insights about the applied model itself. We investigate adversarial examples in the context of Bayesian neural network's (BNN's) uncertainty measures. As these measures are highly non-smooth, we use a smooth Gaussian process classifier (GPC) as substitute. We show that both confidence and uncertainty can be unsuspicious even if the output is wrong. Intriguingly, we find subtle differences in the features influencing uncertainty and confidence for most tasks.
History
Primary Research Area
Trustworthy Information Processing
Open Access Type
Green
BibTeX
@misc{Grosse:Pfaff:Smith:Backes:2018,
title = "The Limitations of Model Uncertainty in Adversarial Settings",
author = "Grosse, Kathrin" AND "Pfaff, David" AND "Smith, Michael Thomas" AND "Backes, Michael",
year = 2018,
month = 12,
doi = "10.48550/arxiv.1812.02606"
}