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Differentially Private Generative Adversarial Networks with Model Inversion

Dongjie Chen, Sen-ching S. Cheung, Chen‐Nee Chuah, Sally Ozonoff

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Abstract

To protect sensitive data in training a Generative Adversarial Network (GAN), the standard approach is to use differentially private (DP) stochastic gradient descent method in which controlled noise is added to the gradients. The quality of the output synthetic samples can be adversely affected and the training of the network may not even converge in the presence of these noises. We propose Differentially Private Model Inversion (DPMI) method where the private data is first mapped to the latent space via a public generator, followed by a lower-dimensional DP-GAN with better convergent properties. Experimental results on standard datasets CIFAR10 and SVHN as well as on a facial landmark dataset for Autism screening show that our approach outperforms the standard DP-GAN method based on Inception Score, Frechet Inception Distance, and classification accuracy under the same privacy guarantee.

Topics & Concepts

Computer scienceGenerative adversarial networkGenerator (circuit theory)Inversion (geology)Stochastic gradient descentAdversarial systemArtificial intelligenceGenerative grammarSynthetic dataNoise (video)Gradient descentMachine learningLandmarkData miningPattern recognition (psychology)Deep learningArtificial neural networkImage (mathematics)BiologyPower (physics)PhysicsStructural basinQuantum mechanicsPaleontologyPrivacy-Preserving Technologies in DataFace recognition and analysisGenerative Adversarial Networks and Image Synthesis
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