Leveraging linear mapping for model-agnostic adversarial defense

IF 2.4 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Huma Jamil, Yajing Liu, Nathaniel Blanchard, Michael Kirby, Chris Peterson
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引用次数: 0

Abstract

In the ever-evolving landscape of deep learning, novel designs of neural network architectures have been thought to drive progress by enhancing embedded representations. However, recent findings reveal that the embedded representations of various state-of-the-art models are mappable to one another via a simple linear map, thus challenging the notion that architectural variations are meaningfully distinctive. While these linear maps have been established for traditional non-adversarial datasets, e.g., ImageNet, to our knowledge no work has explored the linear relation between adversarial image representations of these datasets generated by different CNNs. Accurately mapping adversarial images signals the feasibility of generalizing an adversarial defense optimized for a specific network. In this work, we demonstrate the existence of a linear mapping of adversarial inputs between different models that can be exploited to develop such model-agnostic, generalized adversarial defense. We further propose an experimental setup designed to underscore the concept of this model-agnostic defense. We train a linear classifier using both adversarial and non-adversarial embeddings within the defended space. Subsequently, we assess its performance using adversarial embeddings from other models that are mapped to this space. Our approach achieves an AUROC of up to 0.99 for both CIFAR-10 and ImageNet datasets.
利用线性映射进行与模型无关的对抗性防御
在不断发展的深度学习领域,神经网络架构的新设计被认为可以通过增强嵌入式表示来推动进步。然而,最近的研究结果表明,各种最先进的模型的嵌入式表示可以通过简单的线性地图相互映射,从而挑战了建筑变化有意义的独特概念。虽然这些线性地图已经为传统的非对抗性数据集(例如ImageNet)建立,但据我们所知,还没有研究过由不同cnn生成的这些数据集的对抗性图像表示之间的线性关系。准确映射对抗图像标志着针对特定网络优化的对抗防御泛化的可行性。在这项工作中,我们证明了不同模型之间对抗性输入的线性映射的存在,可以用来开发这种与模型无关的、广义的对抗性防御。我们进一步提出了一个实验设置,旨在强调这种模型不可知论防御的概念。我们在防御空间内使用对抗性和非对抗性嵌入来训练线性分类器。随后,我们使用映射到该空间的其他模型的对抗性嵌入来评估其性能。我们的方法在CIFAR-10和ImageNet数据集上实现了高达0.99的AUROC。
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来源期刊
Frontiers in Computer Science
Frontiers in Computer Science COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-
CiteScore
4.30
自引率
0.00%
发文量
152
审稿时长
13 weeks
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