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Template Attacks vs. Machine Learning Revisited (and the Curse of Dimensionality in Side-Channel Analysis)

机译:重新审视了模板攻击与机器学习的关系(以及侧通道分析中的维度诅咒)

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Template attacks and machine learning are two popular approaches to profiled side-channel analysis. In this paper, we aim to contribute to the understanding of their respective strengths and weaknesses, with a particular focus on their curse of dimensionality. For this purpose, we take advantage of a well-controlled simulated experimental setting in order to put forward two important intuitions. First and from a theoretical point of view, the data complexity of template attacks is not sensitive to the dimension increase in side-channel traces given that their profiling is perfect. Second and from a practical point of view, concrete attacks are always affected by (estimation and assumption) errors during profiling. As these errors increase, machine learning gains interest compared to template attacks, especially when based on random forests.
机译:模板攻击和机器学习是用于分析侧通道分析的两种流行方法。在本文中,我们旨在促进对它们各自优点和缺点的理解,特别是对它们的尺寸诅咒的关注。为此,我们利用一个控制良好的模拟实验环境来提出两个重要的直觉。首先,从理论上来说,模板攻击的数据复杂性对侧通道迹线的维数增长不敏感,因为它们的分析是完美的。其次,从实际的角度来看,在配置过程中,具体的攻击总是受到(估计和假设)错误的影响。随着这些错误的增加,与模板攻击相比,机器学习越来越引起人们的兴趣,尤其是在基于随机森林的情况下。

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