Politics of Adversarial Machine Learning

02/01/2020
by   Kendra Albert, et al.
0

In addition to their security properties, adversarial machine-learning attacks and defenses have political dimensions. They enable or foreclose certain options for both the subjects of the machine learning systems and for those who deploy them, creating risks for civil liberties and human rights. In this paper, we draw on insights from science and technology studies, anthropology, and human rights literature, to inform how defenses against adversarial attacks can be used to suppress dissent and limit attempts to investigate machine learning systems. To make this concrete, we use real-world examples of how attacks such as perturbation, model inversion, or membership inference can be used for socially desirable ends. Although the predictions of this analysis may seem dire, there is hope. Efforts to address human rights concerns in the commercial spyware industry provide guidance for similar measures to ensure ML systems serve democratic, not authoritarian ends

READ FULL TEXT
research
10/25/2018

Law and Adversarial Machine Learning

When machine learning systems fail because of adversarial manipulation, ...
research
12/20/2019

Segmentations-Leak: Membership Inference Attacks and Defenses in Semantic Image Segmentation

Today's success of state of the art methods for semantic segmentation is...
research
06/29/2020

Legal Risks of Adversarial Machine Learning Research

Adversarial Machine Learning is booming with ML researchers increasingly...
research
10/24/2022

Ares: A System-Oriented Wargame Framework for Adversarial ML

Since the discovery of adversarial attacks against machine learning mode...
research
07/13/2020

Security and Machine Learning in the Real World

Machine learning (ML) models deployed in many safety- and business-criti...
research
07/11/2022

"Why do so?" – A Practical Perspective on Machine Learning Security

Despite the large body of academic work on machine learning security, li...
research
12/03/2020

Ethical Testing in the Real World: Evaluating Physical Testing of Adversarial Machine Learning

This paper critically assesses the adequacy and representativeness of ph...

Please sign up or login with your details

Forgot password? Click here to reset