Recently, Generative Adversarial Networks (GANs) have demonstrated their potential in federated learning, i.e., learning a centralized model from data privately hosted by multiple sites. A federatedGAN jointly trains a centralized generator and multiple private discriminators hosted at different sites. A major theoretical challenge for the federated GAN is the heterogeneity of the local data distributions. Traditional approaches cannot guarantee to learn the target distribution, which isa mixture of the highly different local distributions. This paper tackles this theoretical challenge, and for the first time, provides a provably correct framework for federated GAN. We propose a new approach called Universal Aggregation, which simulates a centralized discriminator via carefully aggregating the mixture of all private discriminators. We prove that a generator trained with this simulated centralized discriminator can learn the desired target distribution. Through synthetic and real datasets, we show that our method can learn the mixture of largely different distributions where existing federated GAN methods fail.
翻译:最近,General Adversarial Networks(GANs)展示了其在联合学习方面的潜力,即从多个网站私人托管的数据中学习集中型模型。一个联合型GAN联合培训一个集中型发电机和在不同网站托管的多个私营歧视者。对于联合型GAN来说,一个重大的理论挑战就是当地数据分布的异质性。传统方法无法保证了解目标分布,即高度不同地方分布的混合体。本文应对了这一理论挑战,首次为联合型GAN提供了一个可被确认的正确框架。我们提出了一种名为 " 通用聚合 " 的新方法,该方法通过仔细整合所有私有歧视者的混合来模拟集中型歧视者。我们证明,受过这种模拟型集中型歧视者培训的发电机可以学习理想的目标分布。我们通过合成和真实的数据集,可以证明我们的方法可以学习在现有的联合型GAN方法失败的情况下,在很大程度上不同型分布的混合物。