2021
DOI: 10.1145/3453162
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Improving Deep Learning Networks for Profiled Side-channel Analysis Using Performance Improvement Techniques

Abstract: The use of deep learning techniques to perform side-channel analysis attracted the attention of many researchers as they obtained good performances with them. Unfortunately, the understanding of the neural networks used to perform side-channel attacks is not very advanced yet. In this article, we propose to contribute to this direction by studying the impact of some particular deep learning techniques for tackling side-channel attack problems. More precisely, we propose to focus on three existing techniques: b… Show more

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Cited by 5 publications
(1 citation statement)
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“…By learning the feature expression of clustering algorithm, we can get the convolution parameter setting of convolution neural network and the feature expression of clustering algorithm. By combining the feature expression of clustering algorithm with the convolution result, the starting point of random optimization can be closer to the local optimal solution in the process of deep network training [15][16].…”
Section: Deep Network Improvementmentioning
confidence: 99%
“…By learning the feature expression of clustering algorithm, we can get the convolution parameter setting of convolution neural network and the feature expression of clustering algorithm. By combining the feature expression of clustering algorithm with the convolution result, the starting point of random optimization can be closer to the local optimal solution in the process of deep network training [15][16].…”
Section: Deep Network Improvementmentioning
confidence: 99%