基于随机集成模型变属性的深度神经网络的对抗鲁棒性。

IF 2.6 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Ruoxi Qin, Linyuan Wang, Xuehui Du, Pengfei Xie, Xingyuan Chen, Bin Yan
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引用次数: 0

摘要

深度神经网络(dnn)已被证明在受到对抗性样本攻击时容易受到关键漏洞的影响。这促使了类似网络空间安全的攻击和防御战略的发展。这种策略对攻防机制的依赖性使得双方的相关算法表现为紧密的过程,而防御方法在这些过程中尤为被动。受网络空间为应对无休止的军备竞赛而提出的动态防御方法的启发,本文将集成数量、网络结构和平滑参数定义为可变集成属性,并提出了一种基于异构冗余子模型的随机集成策略。该方法利用深度神经网络的多样性和随机性特征,改变输入输出之间的固定对应梯度。梯度的不可预测性和多样性使得攻击者更难以直接实现白盒攻击,这有助于解决集成模型在白盒攻击下的极端可移植性和脆弱性。ASR-vs.的实验比较。在CIFAR10下不同攻击场景下的-畸变曲线初步证明了所提方法的有效性,即即使是最高容量的攻击者也无法轻易超越集成平滑模型相关的攻击成功率,特别是对于非目标攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Adversarial robustness in deep neural networks based on variable attributes of the stochastic ensemble model.

Adversarial robustness in deep neural networks based on variable attributes of the stochastic ensemble model.

Adversarial robustness in deep neural networks based on variable attributes of the stochastic ensemble model.

Adversarial robustness in deep neural networks based on variable attributes of the stochastic ensemble model.

Deep neural networks (DNNs) have been shown to be susceptible to critical vulnerabilities when attacked by adversarial samples. This has prompted the development of attack and defense strategies similar to those used in cyberspace security. The dependence of such strategies on attack and defense mechanisms makes the associated algorithms on both sides appear as closely processes, with the defense method being particularly passive in these processes. Inspired by the dynamic defense approach proposed in cyberspace to address endless arm races, this article defines ensemble quantity, network structure, and smoothing parameters as variable ensemble attributes and proposes a stochastic ensemble strategy based on heterogeneous and redundant sub-models. The proposed method introduces the diversity and randomness characteristic of deep neural networks to alter the fixed correspondence gradient between input and output. The unpredictability and diversity of the gradients make it more difficult for attackers to directly implement white-box attacks, helping to address the extreme transferability and vulnerability of ensemble models under white-box attacks. Experimental comparison of ASR-vs.-distortion curves with different attack scenarios under CIFAR10 preliminarily demonstrates the effectiveness of the proposed method that even the highest-capacity attacker cannot easily outperform the attack success rate associated with the ensemble smoothed model, especially for untargeted attacks.

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来源期刊
Frontiers in Neurorobotics
Frontiers in Neurorobotics COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCER-ROBOTICS
CiteScore
5.20
自引率
6.50%
发文量
250
审稿时长
14 weeks
期刊介绍: Frontiers in Neurorobotics publishes rigorously peer-reviewed research in the science and technology of embodied autonomous neural systems. Specialty Chief Editors Alois C. Knoll and Florian Röhrbein at the Technische Universität München are supported by an outstanding Editorial Board of international experts. This multidisciplinary open-access journal is at the forefront of disseminating and communicating scientific knowledge and impactful discoveries to researchers, academics and the public worldwide. Neural systems include brain-inspired algorithms (e.g. connectionist networks), computational models of biological neural networks (e.g. artificial spiking neural nets, large-scale simulations of neural microcircuits) and actual biological systems (e.g. in vivo and in vitro neural nets). The focus of the journal is the embodiment of such neural systems in artificial software and hardware devices, machines, robots or any other form of physical actuation. This also includes prosthetic devices, brain machine interfaces, wearable systems, micro-machines, furniture, home appliances, as well as systems for managing micro and macro infrastructures. Frontiers in Neurorobotics also aims to publish radically new tools and methods to study plasticity and development of autonomous self-learning systems that are capable of acquiring knowledge in an open-ended manner. Models complemented with experimental studies revealing self-organizing principles of embodied neural systems are welcome. Our journal also publishes on the micro and macro engineering and mechatronics of robotic devices driven by neural systems, as well as studies on the impact that such systems will have on our daily life.
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