Hyper-parameter Optimization for Machine-Learning based Electromagnetic Side-Channel Analysis

Naila Mukhtar, Yinan Kong
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引用次数: 5

Abstract

Side-channel attacks are the class of attacks which exploits the physical leakages of the system to recover the secret key, based on the weakness induced due to implementation of algorithm on embedded systems. AES is mathematically secure but side-channel information can lead to key recovery. Over the last decade, machine learning has been introduced in parallel along with traditional statistical side-channel analysis methods. Accurate classification u sing t he machine-learning-based approaches critically depends on various factors including, precision of the input data-sets which consist of the features, tuning of different parameters for that particular algorithm, per feature sample length, number of validation folds and feature extraction/selection methods. For analysis of leaked signals in this study, hyper-parameter tuning is carried out on the feature data-sets formed on basis of the time and frequency domain properties of the signals. Results provide the comparative analysis of the best choices and leads to concrete selection of the parameters.
基于机器学习的电磁侧信道分析超参数优化
侧信道攻击是一种利用系统的物理泄漏来恢复密钥的攻击,这种攻击是基于嵌入式系统上实现算法所导致的弱点。AES在数学上是安全的,但侧信道信息可能导致密钥恢复。在过去的十年中,机器学习与传统的统计侧信道分析方法并行引入。使用基于机器学习的方法进行准确分类主要取决于各种因素,包括由特征组成的输入数据集的精度,特定算法的不同参数的调整,每个特征样本长度,验证折叠的数量和特征提取/选择方法。对于本研究中泄漏信号的分析,根据信号的时频域特性形成的特征数据集进行超参数整定。结果提供了最佳选择的对比分析,并给出了参数的具体选择。
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