LGAICRMLSep 28, 2018

Explainable Black-Box Attacks Against Model-based Authentication

arXiv:1810.00024v112 citations
Originality Highly original
AI Analysis

This exposes vulnerabilities in security-critical authentication systems, posing a threat to users and systems relying on these technologies.

The paper demonstrates that mimicking unique signatures in machine learning-based authentication systems is possible, launching attacks in under 130 queries on a face authentication system and under 100 queries on a host authentication system.

Establishing unique identities for both humans and end systems has been an active research problem in the security community, giving rise to innovative machine learning-based authentication techniques. Although such techniques offer an automated method to establish identity, they have not been vetted against sophisticated attacks that target their core machine learning technique. This paper demonstrates that mimicking the unique signatures generated by host fingerprinting and biometric authentication systems is possible. We expose the ineffectiveness of underlying machine learning classification models by constructing a blind attack based around the query synthesis framework and utilizing Explainable-AI (XAI) techniques. We launch an attack in under 130 queries on a state-of-the-art face authentication system, and under 100 queries on a host authentication system. We examine how these attacks can be defended against and explore their limitations. XAI provides an effective means for adversaries to infer decision boundaries and provides a new way forward in constructing attacks against systems using machine learning models for authentication.

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