Bag of tricks for backdoor learning

IF 2.1 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Wireless Networks Pub Date : 2024-04-05 DOI:10.1007/s11276-024-03724-2
Ruitao Hou, Anli Yan, Hongyang Yan, Teng Huang
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Abstract

Deep learning models are vulnerable to backdoor attacks, where an adversary aims to fool the model via data poisoning, such that the victim models perform well on clean samples but behave wrongly on poisoned samples. While researchers have studied backdoor attacks in depth, they have focused on specific attack and defense methods, neglecting the impacts of basic training tricks on the effect of backdoor attacks. Analyzing these influencing factors helps facilitate secure deep learning systems and explore novel defense perspectives. To this end, we provide comprehensive evaluations using a weak clean-label backdoor attack on CIFAR10, focusing on the impacts of a wide range of neglected training tricks on backdoor attacks. Specifically, we concentrate on ten perspectives, e.g., batch size, data augmentation, warmup, and mixup, etc. The results demonstrate that backdoor attacks are sensitive to some training tricks, and optimizing the basic training tricks can significantly improve the effect of backdoor attacks. For example, appropriate warmup settings can enhance the effect of backdoor attacks by 22% and 6% for the two different trigger patterns, respectively. These facts further reveal the vulnerability of deep learning models to backdoor attacks.

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后门学习的窍门袋
深度学习模型容易受到后门攻击,即对手通过数据下毒来愚弄模型,使受害模型在干净样本上表现良好,但在中毒样本上表现错误。虽然研究人员对后门攻击进行了深入研究,但他们关注的是特定的攻击和防御方法,而忽视了基本训练技巧对后门攻击效果的影响。分析这些影响因素有助于促进深度学习系统的安全,并探索新的防御视角。为此,我们利用对 CIFAR10 的弱清洁标签后门攻击进行了全面评估,重点研究了各种被忽视的训练技巧对后门攻击的影响。具体来说,我们主要从批量大小、数据增强、热身和混合等十个方面进行了研究。结果表明,后门攻击对一些训练技巧很敏感,而优化基本训练技巧可以显著改善后门攻击的效果。例如,对于两种不同的触发模式,适当的热身设置可以将后门攻击的效果分别提高 22% 和 6%。这些事实进一步揭示了深度学习模型在后门攻击面前的脆弱性。
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来源期刊
Wireless Networks
Wireless Networks 工程技术-电信学
CiteScore
7.70
自引率
3.30%
发文量
314
审稿时长
5.5 months
期刊介绍: The wireless communication revolution is bringing fundamental changes to data networking, telecommunication, and is making integrated networks a reality. By freeing the user from the cord, personal communications networks, wireless LAN''s, mobile radio networks and cellular systems, harbor the promise of fully distributed mobile computing and communications, any time, anywhere. Focusing on the networking and user aspects of the field, Wireless Networks provides a global forum for archival value contributions documenting these fast growing areas of interest. The journal publishes refereed articles dealing with research, experience and management issues of wireless networks. Its aim is to allow the reader to benefit from experience, problems and solutions described.
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