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A Comparison of Weight Initializers in Deep Learning-Based Side-Channel Analysis

机译:基于深度学习的侧通道分析中的重量初始化者的比较

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摘要

The usage of deep learning in profiled side-channel analysis requires a careful selection of neural network hyperparameters. In recent publications, different network architectures have been presented as efficient profiled methods against protected AES implementations. Indeed, completely different convolutional neural network models have presented similar performance against public side-channel traces databases. In this work, we analyze how weight initializers' choice influences deep neural networks' performance in the profiled side-channel analysis. Our results show that different weight initializers provide radically different behavior. We observe that even high-performing initializers can reach significantly different performance when conducting multiple training phases. Finally, we found that this hyperparameter is more dependent on the choice of dataset than other, commonly examined, hyperparameters. When evaluating the connections with other hyperparameters, the biggest connection is observed with activation functions.
机译:深度学习在分析方向分析中的使用需要仔细选择神经网络的Hyperation HyperParameters。在最近的出版物中,已将不同的网络架构作为有效的异形方法呈现针对受保护AES实现的有效的分布式方法。实际上,完全不同的卷积神经网络模型对公共侧通道迹线数据库呈现了类似的性能。在这项工作中,我们分析了重量初始化者的选择在异形侧通道分析中影响了深度神经网络的性能。我们的结果表明,不同的重量初始化者提供了彻底不同的行为。我们观察到,即使高性能的初始化者也可以在进行多个培训阶段时达到显着不同的性能。最后,我们发现,这个封锁比较更依赖于数据集的选择,而不是其他,常见的,普遍检查的超参数。在评估与其他超参数的连接时,通过激活功能观察到最大的连接。

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