Improved Activation Clipping for Universal Backdoor Mitigation and Test-Time Detection

August 08, 2023 ยท Declared Dead ยท ๐Ÿ› International Workshop on Machine Learning for Signal Processing

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Authors Hang Wang, Zhen Xiang, David J. Miller, George Kesidis arXiv ID 2308.04617 Category cs.LG: Machine Learning Cross-listed cs.CR Citations 5 Venue International Workshop on Machine Learning for Signal Processing Last Checked 4 months ago
Abstract
Deep neural networks are vulnerable to backdoor attacks (Trojans), where an attacker poisons the training set with backdoor triggers so that the neural network learns to classify test-time triggers to the attacker's designated target class. Recent work shows that backdoor poisoning induces over-fitting (abnormally large activations) in the attacked model, which motivates a general, post-training clipping method for backdoor mitigation, i.e., with bounds on internal-layer activations learned using a small set of clean samples. We devise a new such approach, choosing the activation bounds to explicitly limit classification margins. This method gives superior performance against peer methods for CIFAR-10 image classification. We also show that this method has strong robustness against adaptive attacks, X2X attacks, and on different datasets. Finally, we demonstrate a method extension for test-time detection and correction based on the output differences between the original and activation-bounded networks. The code of our method is online available.
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