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Side-channel attacks and machine learning approach

机译:侧通道攻击和机器学习方法

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Most modern devices and cryptoalgorithms are vulnerable to a new class of attack called side-channel attack. It analyses physical parameters of the system in order to get secret key. Most spread techniques are simple and differential power attacks with combination of statistical tools. Few studies cover using machine learning methods for pre-processing and key classification tasks. In this paper, we investigate applicability of machine learning methods and their characteristic. Following theoretical results, we examine power traces of AES encryption with Support Vector Machines algorithm and decision trees and provide roadmap for further research.
机译:大多数现代设备和密码验证都容易受到一种名为侧渠攻击的新攻击。它分析了系统的物理参数,以便获取密钥。大多数展开技术都是简单而差动的功率攻击,与统计工具的组合。很少有研究涵盖使用机器学习方法进行预处理和关键分类任务。在本文中,我们研究了机器学习方法及其特征的适用性。在理论结果之后,我们使用支持向量机算法和决策树检查AES加密的电力迹线,并提供路线图以进行进一步研究。

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