论文标题

通过拉普拉斯平滑的差异私人联盟学习

Differentially Private Federated Learning with Laplacian Smoothing

论文作者

Liang, Zhicong, Wang, Bao, Gu, Quanquan, Osher, Stanley, Yao, Yuan

论文摘要

联合学习旨在通过协作学习模型而无需在用户之间共享私人数据来保护数据隐私。但是,对手可能仍然能够通过攻击已发布的模型来推断私人培训数据。差异隐私提供了针对此类攻击的统计保护,以显着降低训练有素的模型的准确性或实用性。在本文中,我们研究了一种基于私人联合学习(DP-FED-LS)基于拉普拉斯平滑的实用程序增强方案,其中统计精度而不会丢失隐私预算,带有注射高斯噪声的参数聚集可改善。我们的主要观察结果是,联邦学习中的汇总梯度通常享有一种平滑度,即随着频率的增长,傅立叶系数的多项式衰变在图中的稀疏性,可以通过Laplacian的平滑效率来有效利用。在规定的差异隐私预算下,为DP-FED-LS提供了与异质非IID数据均匀采样的DP-FED-LS的收敛误差界限,从而揭示了在有效的维度和差异等方面的Laplacian平滑性方面的效用。对MNIST,SVHN和莎士比亚数据集进行的实验表明,在统一和泊松子采样机制下,该提出的方法可以通过DP-保证和成员隐私来提高模型准确性。

Federated learning aims to protect data privacy by collaboratively learning a model without sharing private data among users. However, an adversary may still be able to infer the private training data by attacking the released model. Differential privacy provides a statistical protection against such attacks at the price of significantly degrading the accuracy or utility of the trained models. In this paper, we investigate a utility enhancement scheme based on Laplacian smoothing for differentially private federated learning (DP-Fed-LS), where the parameter aggregation with injected Gaussian noise is improved in statistical precision without losing privacy budget. Our key observation is that the aggregated gradients in federated learning often enjoy a type of smoothness, i.e. sparsity in the graph Fourier basis with polynomial decays of Fourier coefficients as frequency grows, which can be exploited by the Laplacian smoothing efficiently. Under a prescribed differential privacy budget, convergence error bounds with tight rates are provided for DP-Fed-LS with uniform subsampling of heterogeneous Non-IID data, revealing possible utility improvement of Laplacian smoothing in effective dimensionality and variance reduction, among others. Experiments over MNIST, SVHN, and Shakespeare datasets show that the proposed method can improve model accuracy with DP-guarantee and membership privacy under both uniform and Poisson subsampling mechanisms.

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