Fed-GAN: Federated Generative Adversarial Network With Privacy-Preserving for Cross-Device Scenarios
Abstract: Huge amounts of data from various sources are substantial to dependable distributed machine learning, especially for trustworthy federated learning (FL). However, existing FL methods are difficult to collect enough data for training the global model more accurately, especially in cross-device scenarios. In this paper, we propose a new federated generative adversarial network empowered by differential privacy and knowledge transfer named Fed-GAN, which can be used to address the problem of data shortage and prevent generator leakage from resource-constrained devices, as well as generate high-quality synthetic data while ensuring strict DP guarantees. Different from other generative model methods, our Fed-GAN framework can achieve efficient and secure generative model training and limited permission for resource-constrained devices to prevent them from leaking or misusing the generator. In addition, we propose a pHash-KT method for our Fed-GAN framework, which selects potentially high-quality data through the knowledge of each client for improving the utility of synthetic data. Our Fed-GAN framework satisfies $ (\frac{2k J\lambda }{\sigma ^{2}}+\frac{\log 1 / \delta }{\lambda -1}, \delta )$-DP, and also has high resistance when number of adversaries is 10%–70% of the total number of clients. Extensive experiments demonstrate that our Fed-GAN framework not only generates high-quality synthetic data, but also provides strict DP guarantees, compared with other generative model methods.
External IDs:dblp:journals/tdsc/HanDZRZXW25
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