Securing Safety-Critical Machine Learning Algorithms
tearline
Submitted by Jamie Presken on Mon, 12/17/2018 - 12:09pm
tearline
Submitted by Jamie Presken on Mon, 12/17/2018 - 12:08pm
tearline
Submitted by Jamie Presken on Thu, 09/13/2018 - 2:34pm
tearline
Submitted by Jamie Presken on Thu, 09/13/2018 - 2:34pm
biblio
Submitted by Jamie Presken on Tue, 07/03/2018 - 11:08am
tearline
Submitted by scherlis on Mon, 03/19/2018 - 10:19pm
group_project
Submitted by scherlis on Sun, 03/18/2018 - 11:18pm
Machine-learning algorithms, especially classifiers, are becoming prevalent in safety and security-critical applications. The susceptibility of some types of classifiers to being evaded by adversarial input data has been explored in domains such as spam filtering, but with the rapid growth in adoption of machine learning in multiple application domains amplifies the extent and severity of this vulnerability landscape.
tearline
Submitted by scherlis on Sun, 03/11/2018 - 2:15pm