差分私有数据的分布式鲁棒联邦学习

Siping Shi, Chuang Hu, Dan Wang, Yifei Zhu, Zhu Han
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摘要

局部差分隐私(LDP)是联邦学习中广泛采用的一种保护局部训练数据隐私的重要方法。从理论上讲,它也很好地提供了严格的隐私保证和计算效率。然而,具有局部差分隐私的强隐私保证会降低学习全局模型的对抗鲁棒性。迄今为止,很少有研究关注LDP和联邦学习的对抗性鲁棒性之间的相互作用。在本文中,我们观察到LDP在数据中加入随机噪声以实现局部数据的隐私保证,从而给联邦学习的训练数据集引入不确定性。这将导致鲁棒性降低。为了解决这种由不确定性引起的鲁棒性问题,我们提出利用有前途的分布鲁棒优化(DRO)建模方法。具体来说,我们首先提出了一个分布式鲁棒私有联邦学习问题(DRPri)。虽然我们的公式成功地捕获了自民党产生的不确定性,但我们表明它不容易处理。因此,我们将我们的DRPri问题转化为另一个等价的问题,在基于Wasserstein距离的不确定性集下,称为DRPri- w问题。然后,我们设计了一个鲁棒且私有的联邦学习算法RPFL来解决DRPri-W问题。对RPFL进行了分析,从理论上证明了它满足差分隐私,并具有鲁棒性保证。我们通过在一组已知攻击下的真实数据集上训练分类器来评估RPFL算法。实验结果表明,RPFL算法可将训练好的全局模型在差分私有数据下的鲁棒性提高4.33倍。
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Distributionally Robust Federated Learning for Differentially Private Data
Local differential privacy (LDP) is a prominent approach and widely adopted in federated learning (FL) to preserve the privacy of local training data. It also nicely provides a rigorous privacy guarantee with computational efficiency in theory. However, a strong privacy guarantee with local differential privacy can degrade the adversarial robustness of the learned global model. To date, very few studies focus on the interplay between LDP and the adversarial robustness of federated learning. In this paper, we observe that LDP adds random noise to the data to achieve privacy guarantee of local data, and thus introduces uncertainty to the training dataset of federated learning. This leads to decreased robustness. To solve this robustness problem caused by uncertainty, we propose to leverage the promising distributionally robust optimization (DRO) modeling approach. Specifically, we first formulate a distributionally robust and private federated learning problem (DRPri). While our formulation successfully captures the uncertainty generated by the LDP, we show that it is not easily tractable. We thus transform our DRPri problem to another equivalent problem, under the Wasserstein distance-based uncertainty set, which is named the DRPri-W problem. We then design a robust and private federated learning algorithm, RPFL, to solve the DRPri-W problem. We analyze RPFL and theoretically show it satisfies differential privacy with a robustness guarantee. We evaluate algorithm RPFL by training classifiers on real-world datasets under a set of well-known attacks. Our experimental results show our algorithm RPFL can significantly improve the robustness of the trained global model under differentially private data by up to 4.33 times.
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