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Taylor Expansion of Maximum Likelihood Attacks for Masked and Shuffled Implementations

机译:蒙版和混洗实现的最大似然攻击的泰勒展开

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The maximum likelihood side-channel distinguisher of a template attack scenario is expanded into lower degree attacks according to the increasing powers of the signal-to-noise ratio (SNR). By exploiting this decomposition we show that it is possible to build highly multi-variate attacks which remain efficient when the likelihood cannot be computed in practice due to its computational complexity. The shuffled table recomputation is used as an illustration to derive a new attack which outperforms the ones presented by Bruneau et al. at CHES 2015, and so across the full range of SNRs. This attack combines two attack degrees and is able to exploit high dimensional leakage which explains its efficiency.
机译:根据信噪比(SNR)的增强能力,模板攻击场景的最大似然边信道区分器被扩展为低度攻击。通过利用这种分解,我们表明可以构建高度多变量的攻击,当由于其计算复杂性而无法在实践中计算出可能性时,该攻击仍然有效。改组后的表重新计算用作示例,以得出一种新的攻击,其性能优于Bruneau等人提出的方法。在CHES 2015上,以及整个SNR范围内都如此。这种攻击结合了两种攻击程度,并且能够利用高维泄漏,从而说明了其效率。

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