具有模型反演的差分私有生成对抗网络

Dongjie Chen, S. Cheung, C. Chuah, S. Ozonoff
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引用次数: 8

摘要

为了在生成对抗网络(GAN)训练中保护敏感数据,标准的方法是使用差分私有(DP)随机梯度下降方法,该方法在梯度中加入受控噪声。在这些噪声存在的情况下,输出合成样本的质量会受到不利影响,网络的训练甚至可能无法收敛。我们提出了差分私有模型反演(DPMI)方法,其中私有数据首先通过公共生成器映射到潜在空间,然后是具有更好收敛特性的低维DP-GAN。在标准数据集CIFAR10和SVHN以及用于自闭症筛查的面部地标数据集上的实验结果表明,我们的方法在相同隐私保证下优于基于Inception Score、Frechet Inception Distance和分类精度的标准DP-GAN方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differentially Private Generative Adversarial Networks with Model Inversion
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.
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