TY - JOUR
T1 - Perceived Information Revisited New Metrics to Evaluate Success Rate of Side-Channel Attacks
AU - Ito, Akira
AU - Ueno, Rei
AU - Homma, Naofumi
N1 - Funding Information:
We would like to thank Mr. Kenta Kojima for his technical coporation. We are grateful to Dr. Eleonora Cagli for the shepherding care. This research was supported by JST CREST Grant No. JPMJCR19K5 and the JSPS KAKENHI Grant No. 21H04867 and No. 20K19765, Japan.
Publisher Copyright:
© 2022, Ruhr-University of Bochum. All rights reserved.
PY - 2022/8/31
Y1 - 2022/8/31
N2 - In this study, we present new analytical metrics for evaluating the performance of side-channel attacks (SCAs) by revisiting the perceived information (PI), which is defined using cross-entropy (CE). PI represents the amount of information utilized by a probability distribution that determines a distinguishing rule in SCA. Our analysis partially solves an important open problem in the performance evaluation of deep-learning based SCAs (DL-SCAs) that the relationship between neural network (NN) model evaluation metrics (such as accuracy, loss, and recall) and guessing entropy (GE)/success rate (SR) is unclear. We first theoretically show that the conventional CE/PI is non-calibrated and insufficient for evaluating the SCA performance, as it contains uncertainty in terms of SR. More precisely, we show that an infinite number of probability distributions with different CE/PI can achieve an identical SR. With the above analysis result, we present a modification of CE/PI, named effective CE/PI (ECE/EPI), to eliminate the above uncertainty. The ECE/EPI can be easily calculated for a given probability distribution and dataset, which would be suitable for DL-SCA. Using the ECE/EPI, we can accurately evaluate the SR through the validation loss in the training phase, and can measure the generalization of the NN model in terms of SR in the attack phase. We then analyze and discuss the proposed metrics regarding their relationship to SR, conditions of successful attacks for a distinguishing rule with a probability distribution, a statistic/asymptotic aspect, and the order of key ranks in SCA. Finally, we validate the proposed metrics through experimental attacks on masked AES implementations using DL-SCA.
AB - In this study, we present new analytical metrics for evaluating the performance of side-channel attacks (SCAs) by revisiting the perceived information (PI), which is defined using cross-entropy (CE). PI represents the amount of information utilized by a probability distribution that determines a distinguishing rule in SCA. Our analysis partially solves an important open problem in the performance evaluation of deep-learning based SCAs (DL-SCAs) that the relationship between neural network (NN) model evaluation metrics (such as accuracy, loss, and recall) and guessing entropy (GE)/success rate (SR) is unclear. We first theoretically show that the conventional CE/PI is non-calibrated and insufficient for evaluating the SCA performance, as it contains uncertainty in terms of SR. More precisely, we show that an infinite number of probability distributions with different CE/PI can achieve an identical SR. With the above analysis result, we present a modification of CE/PI, named effective CE/PI (ECE/EPI), to eliminate the above uncertainty. The ECE/EPI can be easily calculated for a given probability distribution and dataset, which would be suitable for DL-SCA. Using the ECE/EPI, we can accurately evaluate the SR through the validation loss in the training phase, and can measure the generalization of the NN model in terms of SR in the attack phase. We then analyze and discuss the proposed metrics regarding their relationship to SR, conditions of successful attacks for a distinguishing rule with a probability distribution, a statistic/asymptotic aspect, and the order of key ranks in SCA. Finally, we validate the proposed metrics through experimental attacks on masked AES implementations using DL-SCA.
KW - Deep learning
KW - Optimal distinguisher
KW - Perceived information
KW - Side-channel analysis
KW - Success rate
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U2 - 10.46586/tches.v2022.i4.228-254
DO - 10.46586/tches.v2022.i4.228-254
M3 - Article
AN - SCOPUS:85137036965
SN - 2569-2925
VL - 2022
SP - 228
EP - 254
JO - IACR Transactions on Cryptographic Hardware and Embedded Systems
JF - IACR Transactions on Cryptographic Hardware and Embedded Systems
IS - 4
ER -