Dynamic Backdoor Attacks Against Machine Learning Models
Ahmed Salem, Rui Wen, Michael Backes, Shiqing Ma, Yang, Zhang

TL;DR
This paper introduces dynamic backdoor attack techniques that generate unpredictable triggers to evade detection, significantly enhancing attack effectiveness against neural networks while bypassing existing defenses.
Contribution
The paper presents the first dynamic backdoor methods, including BaN and c-BaN, which generate random and target-specific triggers, advancing backdoor attack capabilities.
Findings
Achieved near-perfect attack success rates on benchmark datasets.
Successfully bypassed multiple state-of-the-art backdoor defenses.
Demonstrated robustness of techniques across different datasets.
Abstract
Machine learning (ML) has made tremendous progress during the past decade and is being adopted in various critical real-world applications. However, recent research has shown that ML models are vulnerable to multiple security and privacy attacks. In particular, backdoor attacks against ML models have recently raised a lot of awareness. A successful backdoor attack can cause severe consequences, such as allowing an adversary to bypass critical authentication systems. Current backdooring techniques rely on adding static triggers (with fixed patterns and locations) on ML model inputs which are prone to detection by the current backdoor detection mechanisms. In this paper, we propose the first class of dynamic backdooring techniques against deep neural networks (DNN), namely Random Backdoor, Backdoor Generating Network (BaN), and conditional Backdoor Generating Network (c-BaN). Triggers…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Advanced Malware Detection Techniques · Anomaly Detection Techniques and Applications
