학술논문

Label Correlation in Deep Learning-Based Side-Channel Analysis
Document Type
Periodical
Source
IEEE Transactions on Information Forensics and Security IEEE Trans.Inform.Forensic Secur. Information Forensics and Security, IEEE Transactions on. 18:3849-3861 2023
Subject
Signal Processing and Analysis
Computing and Processing
Communication, Networking and Broadcast Technologies
Measurement
Predictive models
Entropy
Training
Security
Indexes
Correlation
Side-channel analysis
profiling analysis
deep learning
label distribution
profiling model fitting
Language
ISSN
1556-6013
1556-6021
Abstract
The efficiency of the profiling side-channel analysis can be significantly improved with machine learning techniques. Although powerful, a fundamental machine learning limitation of being data-hungry received little attention in the side-channel community. In practice, the maximum number of leakage traces that evaluators/attackers can obtain is constrained by the scheme requirements or the limited accessibility of the target. Even worse, various countermeasures in modern devices increase the conditions on the profiling size to break the target. This work demonstrates a practical approach to dealing with the lack of profiling traces. Instead of learning from a one-hot encoded label, transferring the labels to their distribution can significantly speed up the convergence of guessing entropy. By studying the relationship between all possible key candidates, we propose a new metric, denoted Label Correlation (LC), to evaluate the generalization ability of the profiling model. We validate LC with two common use cases: early stopping and network architecture search, and the results indicate its superior performance.