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Beyond Inferring Class Representatives: User-Level Privacy Leakage From Federated Learning

机译:超越班级代表:联合学习的用户级隐私泄漏

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Federated learning, i.e., a mobile edge computing framework for deep learning, is a recent advance in privacy-preserving machine learning, where the model is trained in a decentralized manner by the clients, i.e., data curators, preventing the server from directly accessing those private data from the clients. This learning mechanism significantly challenges the attack from the server side. Although the state-of-the-art attacking techniques that incorporated the advance of Generative adversarial networks (GANs) could construct class representatives of the global data distribution among all clients, it is still challenging to distinguishably attack a specific client (i.e., user-level privacy leakage), which is a stronger privacy threat to precisely recover the private data from a specific client. This paper gives the first attempt to explore user-level privacy leakage against the federated learning by the attack from a malicious server. We propose a framework incorporating GAN with a multi-task discriminator, which simultaneously discriminates category, reality, and client identity of input samples. The novel discrimination on client identity enables the generator to recover user specified private data. Unlike existing works that tend to interfere the training process of the federated learning, the proposed method works “invisibly” on the server side. The experimental results demonstrate the effectiveness of the proposed attacking approach and the superior to the state-of-the-art.
机译:联合学习,即用于深度学习的移动边缘计算框架,是隐私保护机器学习的最新进展,其中,客户端(即数据管理员)以分散的方式训练模型,从而阻止服务器直接访问那些模型。来自客户的私人数据。这种学习机制极大地挑战了服务器端的攻击。尽管融合了对抗性网络(GANs)的先进技术可以构成所有客户端之间全球数据分布的类代表,但要区别地攻击特定客户端(例如,级别的隐私泄漏),这是一种较强的隐私威胁,无法从特定客户端精确恢复私有数据。本文首次尝试通过恶意服务器的攻击来探索针对联合学习的用户级隐私泄漏。我们提出了一个将GAN与多任务鉴别器相结合的框架,该鉴别器同时区分了输入样本的类别,现实和客户身份。对客户端身份的新颖区分使生成器能够恢复用户指定的私有数据。与现有的工作往往会干扰联合学习的培训过程不同,所提出的方法在服务器端“无形地”起作用。实验结果证明了所提出的攻击方法的有效性,并且优于最新技术。

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