LGAIJan 15, 2021

Neural Attention Distillation: Erasing Backdoor Triggers from Deep Neural Networks

arXiv:2101.05930v2557 citationsHas Code
Originality Highly original
AI Analysis

This addresses a critical security vulnerability in deep neural networks, offering a practical defense against backdoor attacks with minimal data requirements.

The paper tackles the problem of backdoor attacks in deep neural networks by proposing Neural Attention Distillation (NAD), a defense framework that erases backdoor triggers using only 5% clean training data without significant performance degradation on clean examples.

Deep neural networks (DNNs) are known vulnerable to backdoor attacks, a training time attack that injects a trigger pattern into a small proportion of training data so as to control the model's prediction at the test time. Backdoor attacks are notably dangerous since they do not affect the model's performance on clean examples, yet can fool the model to make incorrect prediction whenever the trigger pattern appears during testing. In this paper, we propose a novel defense framework Neural Attention Distillation (NAD) to erase backdoor triggers from backdoored DNNs. NAD utilizes a teacher network to guide the finetuning of the backdoored student network on a small clean subset of data such that the intermediate-layer attention of the student network aligns with that of the teacher network. The teacher network can be obtained by an independent finetuning process on the same clean subset. We empirically show, against 6 state-of-the-art backdoor attacks, NAD can effectively erase the backdoor triggers using only 5\% clean training data without causing obvious performance degradation on clean examples. Code is available in https://github.com/bboylyg/NAD.

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