Paper 2024/1949
Avenger Ensemble: Genetic Algorithm-Driven Ensemble Selection for Deep Learning-based Side-Channel Analysis
Abstract
Side-Channel Analysis (SCA) exploits physical vulnerabilities in systems to reveal secret keys. With the rise of Internet-of-Things, evaluating SCA attacks has become crucial. Profiling attacks, enhanced by Deep Learning-based Side-Channel Analysis (DLSCA), have shown significant improvements over classical techniques. Recent works demonstrate that ensemble methods outperform single neural networks. However, almost every existing ensemble selection method in SCA only picks the top few best-performing neural networks for the ensemble, which we coined as Greedily-Selected Method (GSM), which may not be optimal. This work proposes Evolutionary Avenger Initiative (EAI), a genetic algorithm-driven ensemble selection algorithm, to create effective ensembles for DLSCA. We investigate two fitness functions and evaluate EAI across four datasets, including \AES and \ascon implementations. We show that EAI outperforms GSM, recovering secrets with the least number of traces. Notably, EAI successfully recovers secret keys for \ascon datasets where GSM fails, demonstrating its effectiveness.
Metadata
- Available format(s)
- Category
- Attacks and cryptanalysis
- Publication info
- Preprint.
- Keywords
- Side-channel analysisDeep learningEnsemble learningGenetic algorithm
- Contact author(s)
-
minghui002 @ e ntu edu sg
trevor yap @ ntu edu sg - History
- 2024-12-06: approved
- 2024-12-02: received
- See all versions
- Short URL
- https://ia.cr/2024/1949
- License
-
CC BY
BibTeX
@misc{cryptoeprint:2024/1949, author = {Zhao Minghui and Trevor Yap}, title = {Avenger Ensemble: Genetic Algorithm-Driven Ensemble Selection for Deep Learning-based Side-Channel Analysis}, howpublished = {Cryptology {ePrint} Archive, Paper 2024/1949}, year = {2024}, url = {https://eprint.iacr.org/2024/1949} }