On the Difficulty of Hiding Keys in Neural Networks

Tobias Kupek, Cecilia Pasquini, Rainer Böhme
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引用次数: 3

Abstract

In order to defend neural networks against malicious attacks, recent approaches propose the use of secret keys in the training or inference pipelines of learning systems. While this concept is innovative and the results are promising in terms of attack mitigation and classification accuracy, the effectiveness relies on the secrecy of the key. However, this aspect is often not discussed. In this short paper, we explore this issue for the case of a recently proposed key-based deep neural network. White-box experiments on multiple models and datasets, using the original key-based method and our own extensions, show that it is currently possible to extract secret key bits with relatively limited effort.
关于神经网络中隐藏密钥的困难
为了保护神经网络免受恶意攻击,最近的方法提出在学习系统的训练或推理管道中使用密钥。虽然这个概念是创新的,并且在攻击缓解和分类准确性方面的结果是有希望的,但其有效性依赖于密钥的保密性。然而,这方面往往不被讨论。在这篇短文中,我们以最近提出的基于密钥的深度神经网络为例探讨了这个问题。使用原始的基于密钥的方法和我们自己的扩展在多个模型和数据集上进行的白盒实验表明,目前可以用相对有限的努力提取秘密密钥位。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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