相关差分统计模型与相关密钥线性密码分析

IF 1.7 Q3 COMPUTER SCIENCE, SOFTWARE ENGINEERING
K. Nyberg
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引用次数: 0

摘要

这项工作的目标是提出一个线性密码分析的相关密钥模型。当使用相同的输入样本来计算两个布尔函数的相关性时,我们首先给出两个布尔函数的采样相关性差异的均值和方差。这一结果进一步推广到确定在固定大小的随机数据样本和随机布尔函数对上的一对布尔函数的相关性差的均值和方差。我们使用多项分布的性质来获得这些结果,而不需要独立的假设。利用多项分布的多元正态逼近,得到了相关键相关差的近似正态分布。然后将此结果应用于现有的相关密钥密码分析。我们获得了更准确的右键和错键分布,并消除了关于采样相关性独立性的人为假设。我们将此研究扩展到使用多个线性近似,并提出一个Χ2-type统计量,证明如果线性近似是独立的,则该统计量是Χ2分布的。我们进一步检查多维线性近似的统计量,并讨论为什么在相关键设置中删除关于线性近似独立性的假设与在单键设置中相同的方式不起作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Statistical Model of Correlation Difference and Related-Key Linear Cryptanalysis
The goal of this work is to propose a related-key model for linear cryptanalysis. We start by giving the mean and variance of the difference of sampled correlations of two Boolean functions when using the same sample of inputs to compute both correlations. This result is further extended to determine the mean and variance of the difference of correlations of a pair of Boolean functions taken over a random data sample of fixed size and over a random pair of Boolean functions. We use the properties of the multinomial distribution to achieve these results without independence assumptions. Using multivariate normal approximation of the multinomial distribution we obtain that the distribution of the difference of related-key correlations is approximately normal. This result is then applied to existing related-key cryptanalyses. We obtain more accurate right-key and wrong-key distributions and remove artificial assumptions about independence of sampled correlations. We extend this study to using multiple linear approximations and propose a Χ2-type statistic, which is proven to be Χ2 distributed if the linear approximations are independent. We further examine this statistic for multidimensional linear approximation and discuss why removing the assumption about independence of linear approximations does not work in the related-key setting the same way as in the single-key setting.
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来源期刊
IACR Transactions on Symmetric Cryptology
IACR Transactions on Symmetric Cryptology Mathematics-Applied Mathematics
CiteScore
5.50
自引率
22.90%
发文量
37
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