Enhanced related-key differential neural distinguishers for SIMON and SIMECK block ciphers.

IF 3.5 4区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE PeerJ Computer Science Pub Date : 2024-11-25 eCollection Date: 2024-01-01 DOI:10.7717/peerj-cs.2566
Gao Wang, Gaoli Wang
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Abstract

At CRYPTO 2019, Gohr pioneered the application of deep learning to differential cryptanalysis and successfully attacked the 11-round NSA block cipher Speck32/64 with a 7-round and an 8-round single-key differential neural distinguisher. Subsequently, Lu et al. (DOI 10.1093/comjnl/bxac195) presented the improved related-key differential neural distinguishers against the SIMON and SIMECK. Following this work, we provide a framework to construct the enhanced related-key differential neural distinguisher for SIMON and SIMECK. In order to select input differences efficiently, we introduce a method that leverages weighted bias scores to approximate the suitability of various input differences. Building on the principles of the basic related-key differential neural distinguisher, we further propose an improved scheme to construct the enhanced related-key differential neural distinguisher by utilizing two input differences, and obtain superior accuracy than Lu et al. for both SIMON and SIMECK. Specifically, our meticulous selection of input differences yields significant accuracy improvements of 3% and 1.9% for the 12-round and 13-round basic related-key differential neural distinguishers of SIMON32/64. Moreover, our enhanced related-key differential neural distinguishers surpass the basic related-key differential neural distinguishers. For 13-round SIMON32/64, 13-round SIMON48/96, and 14-round SIMON64/128, the accuracy of their related-key differential neural distinguishers increases from 0.545, 0.650, and 0.580 to 0.567, 0.696, and 0.618, respectively. For 15-round SIMECK32/64, 19-round SIMECK48/96, and 22-round SIMECK64/128, the accuracy of their neural distinguishers is improved from 0.547, 0.516, and 0.519 to 0.568, 0.523, and 0.526, respectively.

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SIMON和SIMECK分组密码的增强相关密钥差分神经区分器。
在CRYPTO 2019上,Gohr率先将深度学习应用于差分密码分析,并成功使用7轮和8轮单键差分神经区分器攻击了11轮NSA分组密码Speck32/64。随后,Lu等人(DOI 10.1093/comjnl/bxac195)提出了针对SIMON和SIMECK的改进的相关关键差分神经区分器。在此基础上,我们提供了一个框架来构建SIMON和SIMECK的增强型相关键差分神经区分器。为了有效地选择输入差异,我们引入了一种利用加权偏差分数来近似各种输入差异的适用性的方法。在基本关联键差分神经区分器原理的基础上,我们进一步提出了一种利用两个输入差构建增强关联键差分神经区分器的改进方案,在SIMON和SIMECK上都获得了优于Lu等人的准确率。具体来说,我们对输入差异的细致选择使得SIMON32/64的12轮和13轮基本相关键差分神经区分器的准确率分别提高了3%和1.9%。此外,我们的改进的相关键差分神经区分器优于基本的相关键差分神经区分器。对于13轮的SIMON32/64、13轮的SIMON48/96和14轮的SIMON64/128,其相关键差分神经区分器的准确率分别从0.545、0.650和0.580提高到0.567、0.696和0.618。对于15轮SIMECK32/64、19轮SIMECK48/96和22轮SIMECK64/128,它们的神经分类准确率分别从0.547、0.516和0.519提高到0.568、0.523和0.526。
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来源期刊
PeerJ Computer Science
PeerJ Computer Science Computer Science-General Computer Science
CiteScore
6.10
自引率
5.30%
发文量
332
审稿时长
10 weeks
期刊介绍: PeerJ Computer Science is the new open access journal covering all subject areas in computer science, with the backing of a prestigious advisory board and more than 300 academic editors.
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