SIMON和SIMECK分组密码改进的(相关密钥)差分神经鉴别器

IF 1.5 4区 计算机科学 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Computer Journal Pub Date : 2023-01-22 DOI:10.1093/comjnl/bxac195
Jinyu Lu, Guoqiang Liu, Bing Sun, Chao Li, Li Liu
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引用次数: 1

摘要

在CRYPTO 2019中,Gohr进行了开创性的尝试,成功地将深度学习应用于针对NSA分组密码Speck 32/64的差分密码分析中,取得了比纯差分区分器更高的准确率。就其本质而言,挖掘数据中的有效特征在数据驱动的深度学习中起着至关重要的作用。本文除了考虑密文对训练数据信息的完整性外,还将差分密码分析结构的领域知识考虑到深度学习的训练过程中,以提高性能。同时,以Simon 32/64差分神经鉴别器的性能为切入点,研究输入差分对混合鉴别器性能的影响,选择合适的输入差分。最终,我们提高了Simon 32/64、Simon 64/128、Simeck 32/64和Simeck 64/128的神经分类准确率。我们还首次在Simon 32/64、Simon 64/128、Simeck 32/64和Simeck 64/128的round-约简版本上获得了基于相关键的差分神经区分器。
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Improved (Related-Key) Differential-Based Neural Distinguishers for SIMON and SIMECK Block Ciphers
Abstract In CRYPTO 2019, Gohr made a pioneering attempt and successfully applied deep learning to the differential cryptanalysis against NSA block cipher Speck 32/64, achieving higher accuracy than the pure differential distinguishers. By its very nature, mining effective features in data plays a crucial role in data-driven deep learning. In this paper, in addition to considering the integrity of the information from the training data of the ciphertext pair, domain knowledge about the structure of differential cryptanalysis is also considered into the training process of deep learning to improve the performance. Meanwhile, taking the performance of the differential-neural distinguisher of Simon 32/64 as an entry point, we investigate the impact of input difference on the performance of the hybrid distinguishers to choose the proper input difference. Eventually, we improve the accuracy of the neural distinguishers of Simon 32/64, Simon 64/128, Simeck 32/64 and Simeck 64/128. We also obtain related-key differential-based neural distinguishers on round-reduced versions of Simon 32/64, Simon 64/128, Simeck 32/64 and Simeck 64/128 for the first time.
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来源期刊
Computer Journal
Computer Journal 工程技术-计算机:软件工程
CiteScore
3.60
自引率
7.10%
发文量
164
审稿时长
4.8 months
期刊介绍: The Computer Journal is one of the longest-established journals serving all branches of the academic computer science community. It is currently published in four sections.
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