RecUP-FL:通过用户可配置的隐私防御协调联邦学习中的效用和隐私

Yue-li Cui, Syed Imran Ali Meerza, Zhuohang Li, Luyang Liu, Jiaxin Zhang, Jian Liu
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引用次数: 0

摘要

联邦学习(FL)允许客户在不共享其私有数据的情况下协作训练模型,从而提供了各种隐私优势。然而,最近的研究表明,私人信息仍然可以通过共享梯度泄露。为了进一步减少隐私泄露的风险,现有的防御通常要求客户端在与服务器共享之前本地修改其梯度(例如,差异隐私)。虽然这些方法在某些情况下是有效的,但它们将整个数据视为要保护的单个实体,这通常会在模型实用中付出很大的代价。在本文中,我们试图通过提出用户可配置的隐私防御RecUP-FL来协调FL中的效用和隐私,该防御可以更好地关注用户指定的敏感属性,同时获得比传统防御在效用上的显着改进。此外,我们观察到现有的推理攻击通常依赖于机器学习模型来提取私有信息(例如,属性)。因此,我们将这种隐私防御制定为对抗学习问题,其中RecUP-FL产生轻微的扰动,可以在共享之前添加到梯度中以欺骗对手模型。在不同对抗设置(属性推理攻击和数据重建攻击)下的四个数据集上进行的大量实验表明,RecUP-FL可以满足用户指定的敏感属性隐私约束,同时与最先进的隐私防御相比,显著提高了模型的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
RecUP-FL: Reconciling Utility and Privacy in Federated learning via User-configurable Privacy Defense
Federated learning (FL) provides a variety of privacy advantages by allowing clients to collaboratively train a model without sharing their private data. However, recent studies have shown that private information can still be leaked through shared gradients. To further minimize the risk of privacy leakage, existing defenses usually require clients to locally modify their gradients (e.g., differential privacy) prior to sharing with the server. While these approaches are effective in certain cases, they regard the entire data as a single entity to protect, which usually comes at a large cost in model utility. In this paper, we seek to reconcile utility and privacy in FL by proposing a user-configurable privacy defense, RecUP-FL, that can better focus on the user-specified sensitive attributes while obtaining significant improvements in utility over traditional defenses. Moreover, we observe that existing inference attacks often rely on a machine learning model to extract the private information (e.g., attributes). We thus formulate such a privacy defense as an adversarial learning problem, where RecUP-FL generates slight perturbations that can be added to the gradients before sharing to fool adversary models. To improve the transferability to un-queryable black-box adversary models, inspired by the idea of meta-learning, RecUP-FL forms a model zoo containing a set of substitute models and iteratively alternates between simulations of the white-box and the black-box adversarial attack scenarios to generate perturbations. Extensive experiments on four datasets under various adversarial settings (both attribute inference attack and data reconstruction attack) show that RecUP-FL can meet user-specified privacy constraints over the sensitive attributes while significantly improving the model utility compared with state-of-the-art privacy defenses.
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