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DPIS

Jianxin Wei, Ergute Bao, Xiaokui Xiao, Yin Yang

2022Proceedings of the 2022 ACM SIGSAC Conference on Computer and Communications Security17 citationsDOIOpen Access PDF

Abstract

Nowadays, differential privacy (DP) has become a well-accepted standard for privacy protection, and deep neural networks (DNN) have been immensely successful in machine learning. The combination of these two techniques, i.e., deep learning with differential privacy, promises the privacy-preserving release of high-utility models trained with sensitive data such as medical records. A classic mechanism for this purpose is DP-SGD, which is a differentially private version of the stochastic gradient descent (SGD) optimizer commonly used for DNN training. Subsequent approaches have improved various aspects of the model training process, including noise decay schedule, model architecture, feature engineering, and hyperparameter tuning. However, the core mechanism for enforcing DP in the SGD optimizer remains unchanged ever since the original DP-SGD algorithm, which has increasingly become a fundamental barrier limiting the performance of DP-compliant machine learning solutions.

Topics & Concepts

Differential privacyStochastic gradient descentComputer scienceHyperparameterArtificial intelligenceLimitingMachine learningScheduleArtificial neural networkDeep learningProcess (computing)Information privacyGradient descentDeep neural networksNoise (video)Feature engineeringData miningComputer securityEngineeringOperating systemImage (mathematics)Mechanical engineeringPrivacy-Preserving Technologies in DataStochastic Gradient Optimization TechniquesAdversarial Robustness in Machine Learning
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