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Being Patient and Persistent: Optimizing An Early Stopping Strategy for Deep Learning in Profiled Attacks

Authors :
Paguada, Servio
Batina, Lejla
Buhan, Ileana
Armendariz, Igor
Paguada, Servio
Batina, Lejla
Buhan, Ileana
Armendariz, Igor
Publication Year :
2021

Abstract

The absence of an algorithm that effectively monitors deep learning models used in side-channel attacks increases the difficulty of evaluation. If the attack is unsuccessful, the question is if we are dealing with a resistant implementation or a faulty model. We propose an early stopping algorithm that reliably recognizes the model's optimal state during training. The novelty of our solution is an efficient implementation of guessing entropy estimation. Additionally, we formalize two conditions, persistence and patience, for a deep learning model to be optimal. As a result, the model converges with fewer traces.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333735067
Document Type :
Electronic Resource