1 documents found
Information × Registration Number 2122U006279, Article popup.category Препринт Title Stochastic Relaxation of Deep Neural Networks as a Way to Build Adversarial Robustness (AI translated) popup.author Leno SolomiiaLeno Solomiia popup.publication 01-01-2022 popup.source_user Український католицький університет popup.source https://hdl.handle.net/20.500.14570/4402 popup.publisher Description Deep Neural Networks show spectacular results on real-life tasks from different applications: recommendation systems, speech recognition, autonomous driving, etc. Despite this success they were proven to be vulnerable to small perturbations, imperceptible to human eye, in input data called adversarial attacks. Main reasons of such vulnerability lie in the overparametrization of DNNs, tendency to overfitting and high variance of learned features. In this work we show that stochastic relaxation of Deep Neural Networks impacts those factors and can help to improve adversarial robustness of a model up to ×1.7 times. We perform experiments on Binary and ReLU Convolutional Neural Networks and later compare our method results with current SOTA approach to building adversarial robustness - adversarial learning. In conclusions we propose steps that might be taken to further improve performance of Stochastic Neural Networks on both clean and adversarial data. popup.nrat_date 2025-11-05 Close
Article
Препринт
Leno Solomiia. Stochastic Relaxation of Deep Neural Networks as a Way to Build Adversarial Robustness (AI translated) : published. 2022-01-01; Український католицький університет, 2122U006279
1 documents found

Updated: 2026-03-20