spectrum - dp:基于谱摄动和滤波的差分私有深度学习

Ce Feng, Nuo Xu, Wujie Wen, P. Venkitasubramaniam, Caiwen Ding
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引用次数: 2

摘要

在深度学习算法中,差分隐私是一种被广泛接受的隐私度量,实现它依赖于一种称为差分私有随机梯度下降(DP-SGD)的噪声训练方法。DP-SGD需要在密集神经网络的每个梯度中直接添加噪声,以显着的效用成本实现隐私。在这项工作中,我们提出了一种新的差分私有学习方法spectrum - dp,它将谱域的梯度扰动与谱滤波相结合,以更低的噪声尺度实现所需的隐私保证,从而获得更好的效用。针对包含卷积层和全连接层的架构,我们开发了基于Spectral-DP的差分私有深度学习方法。特别是,对于完全连接的层,我们将基于块循环的空间重构与光谱- dp相结合,以获得更好的效用。通过全面的实验,我们研究并提供了在基准数据集上实现光谱- dp深度学习的指导方针。与最先进的基于DP-SGD的方法相比,spectrum - dp在从头开始训练和迁移学习设置中都具有更好的实用性能。
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Spectral-DP: Differentially Private Deep Learning through Spectral Perturbation and Filtering
Differential privacy is a widely accepted measure of privacy in the context of deep learning algorithms, and achieving it relies on a noisy training approach known as differentially private stochastic gradient descent (DP-SGD). DP-SGD requires direct noise addition to every gradient in a dense neural network, the privacy is achieved at a significant utility cost. In this work, we present Spectral-DP, a new differentially private learning approach which combines gradient perturbation in the spectral domain with spectral filtering to achieve a desired privacy guarantee with a lower noise scale and thus better utility. We develop differentially private deep learning methods based on Spectral-DP for architectures that contain both convolution and fully connected layers. In particular, for fully connected layers, we combine a block-circulant based spatial restructuring with Spectral-DP to achieve better utility. Through comprehensive experiments, we study and provide guidelines to implement Spectral-DP deep learning on benchmark datasets. In comparison with state-of-the-art DP-SGD based approaches, Spectral-DP is shown to have uniformly better utility performance in both training from scratch and transfer learning settings.
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