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Fast Correlation Attacks over Extension Fields, Large-Unit Linear Approximation and Cryptanalysis of SNOW 2.0

机译:快速相关性攻击扩展领域,大单位线性近似和雪2.0的密码分析

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Several improvements of fast correlation attacks have been proposed during the past two decades, with a regrettable lack of a better generalization and adaptation to the concrete involved primitives, especially to those modern stream ciphers based on word-based LFSRs. In this paper, we develop some necessary cryptanalytic tools to bridge this gap. First, a formal framework for fast correlation attacks over extension fields is constructed, under which the theoretical predictions of the computational complexities for both the offline and online/decoding phase can be reliably derived. Our decoding algorithm makes use of Fast Walsh Transform (FWT) to get a better performance. Second, an efficient algorithm to compute the large-unit distribution of a broad class of functions is proposed, which allows to find better linear approximations than the bitwise ones with low complexity in symmetric-key primitives. Last, we apply our methods to SNOW 2.0, an ISO/IEC 18033-4 standard stream cipher, which results in the significantly reduced complexities all below 2~(164.15). This attack is more tnan 2~(49) times better than the best published result at Asiacrypt 2008. Our results have been verified by experiments on a small-scale version of SNOW 2.0.
机译:在过去的二十年中提出了几次快速相关攻击的改进,令人遗憾的是缺乏更好的概括和对混凝土涉及原语的改进,特别是基于基于词的LFSR的现代流密码。在本文中,我们开发了一些必要的密码工具来弥合这种差距。首先,构造了在扩展字段上进行快速相关攻击的正式框架,在该框架上,可以可靠地派生用于离线和联机和联机/解码阶段的计算复杂性的理论预测。我们的解码算法利用快速沃尔什变换(FWT)以获得更好的性能。其次,提出了一种计算广泛功能的大单位分布的有效算法,其允许找到比具有低复杂性在对称密钥基元的位线的线性近似。最后,我们将方法应用于Snow 2.0,ISO / IEC 18033-4标准流密码,从而导致所有低于2〜(164.15)的复杂性显着降低。这次攻击比2008年亚洲的最佳发布结果更好地攻击2〜(49)倍。我们的结果是通过关于小型雪2.0小规模版本的实验验证的结果。

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