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Differentially Private Learning with Grouped Gradient Clipping

Haolin Liu, Chenyu Li, Bochao Liu, Pengju Wang, Shiming Ge, Weiping Wang

202112 citationsDOI

Abstract

While deep learning has proved success in many critical tasks by training models from large-scale data, some private information within can be recovered from the released models, leading to the leakage of privacy. To address this problem, this paper presents a differentially private deep learning paradigm to train private models. In the approach, we propose and incorporate a simple operation termed grouped gradient clipping to modulate the gradient weights. We also incorporated the smooth sensitivity mechanism into differentially private deep learning paradigm, which bounds the adding Gaussian noise. In this way, the resulting model can simultaneously provide with strong privacy protection and avoid accuracy degradation, providing a good trade-off between privacy and performance. The theoretic advantages of grouped gradient clipping are well analyzed. Extensive evaluations on popular benchmarks and comparisons with 11 state-of-the-arts clearly demonstrate the effectiveness and genearalizability of our approach.

Topics & Concepts

Computer scienceDeep learningClipping (morphology)Differential privacyArtificial intelligenceGradient descentInformation privacyMachine learningStochastic gradient descentPrivate information retrievalNoise (video)Data modelingGaussianData miningArtificial neural networkComputer securityImage (mathematics)DatabaseQuantum mechanicsPhysicsPhilosophyLinguisticsPrivacy-Preserving Technologies in DataCryptography and Data SecurityStochastic Gradient Optimization Techniques
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