Federated learning is an emerging concept in the domain of distributed machine learning. This concept has enabled GANs to benefit from the rich distributed training data while preserving privacy. However, in a non-iid setting, current federated GAN architectures are unstable, struggling to learn the distinct features and vulnerable to mode collapse. In this paper, we propose a novel architecture MULTI-FLGAN to solve the problem of low-quality images, mode collapse and instability for non-iid datasets. Our results show that MULTI-FLGAN is four times as stable and performant (i.e. high inception score) on average over 20 clients compared to baseline FLGAN.
翻译:在分布式机器学习领域,联邦学习是一个新兴概念。这个概念使全球网络能够从丰富的分布式培训数据中受益,同时保护隐私。然而,在非二元环境下,目前联邦化的全球网络结构不稳定,难以了解不同特点,容易发生模式崩溃。在本文中,我们建议建立一个新型的多功能网络,以解决非二元数据集的低质量图像、模式崩溃和不稳定问题。我们的结果显示,与基线FLGAN相比,多边网络平均为稳定和绩效(即高初始分)的四倍,客户平均超过20个。