APDL:用于白盒对抗性攻击的自适应步长方法

IF 5 2区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Complex & Intelligent Systems Pub Date : 2025-01-02 DOI:10.1007/s40747-024-01748-x
Jiale Hu, Xiang Li, Changzheng Liu, Ronghua Zhang, Junwei Tang, Yi Sun, Yuedong Wang
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引用次数: 0

摘要

最近的研究表明,深度学习模型容易受到对抗性攻击,包括梯度攻击,这可能导致错误的输出。现有的梯度攻击方法通常依靠重复的多步策略来提高攻击成功率,导致训练时间长,过拟合严重。为了解决这些问题,我们提出了一种基于双损失优化(APDL)的自适应微扰梯度攻击方法。该方法基于指数距离函数自适应调整单步扰动幅度,从而加快了收敛过程。APDL在不到10次迭代的情况下实现了收敛,优于传统的非自适应方法,并且以较少的迭代实现了较高的攻击成功率。此外,为了提高梯度攻击(如APDL)在不同模型之间的可转移性,并减少过拟合对训练模型的影响,我们引入了基于知识蒸馏原理的三微分logit融合(TDLF)方法。这种方法通过调整标签的硬度和柔软度来减轻与梯度攻击相关的边缘效应。在与imagenet兼容的数据集上进行的实验表明,APDL方法比常用的非自适应方法要快得多,而TDLF方法具有较强的可移植性。
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APDL: an adaptive step size method for white-box adversarial attacks

Recent research has shown that deep learning models are vulnerable to adversarial attacks, including gradient attacks, which can lead to incorrect outputs. The existing gradient attack methods typically rely on repetitive multistep strategies to improve their attack success rates, resulting in longer training times and severe overfitting. To address these issues, we propose an adaptive perturbation-based gradient attack method with dual-loss optimization (APDL). This method adaptively adjusts the single-step perturbation magnitude based on an exponential distance function, thereby accelerating the convergence process. APDL achieves convergence in fewer than 10 iterations, outperforming the traditional nonadaptive methods and achieving a high attack success rate with fewer iterations. Furthermore, to increase the transferability of gradient attacks such as APDL across different models and reduce the effects of overfitting on the training model, we introduce a triple-differential logit fusion (TDLF) method grounded in knowledge distillation principles. This approach mitigates the edge effects associated with gradient attacks by adjusting the hardness and softness of labels. Experiments conducted on ImageNet-compatible datasets demonstrate that APDL is significantly faster than the commonly used nonadaptive methods, whereas the TDLF method exhibits strong transferability.

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来源期刊
Complex & Intelligent Systems
Complex & Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
9.60
自引率
10.30%
发文量
297
期刊介绍: Complex & Intelligent Systems aims to provide a forum for presenting and discussing novel approaches, tools and techniques meant for attaining a cross-fertilization between the broad fields of complex systems, computational simulation, and intelligent analytics and visualization. The transdisciplinary research that the journal focuses on will expand the boundaries of our understanding by investigating the principles and processes that underlie many of the most profound problems facing society today.
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