To achieve a high learning accuracy, generative adversarial networks (GANs) must be fed by large datasets that adequately represent the data space. However, in many scenarios, the available datasets may be limited and distributed across multiple agents, each of which is seeking to learn the distribution of the data on its own. In such scenarios, the local datasets are inherently private and agents often do not wish to share them. In this paper, to address this multi-agent GAN problem, a novel brainstorming GAN (BGAN) architecture is proposed using which multiple agents can generate real-like data samples while operating in a fully distributed manner and preserving their data privacy. BGAN allows the agents to gain information from other agents without sharing their real datasets but by "brainstorming" via the sharing of their generated data samples. In contrast to existing distributed GAN solutions, the proposed BGAN architecture is designed to be fully distributed, and it does not need any centralized controller. Moreover, BGANs are shown to be scalable and not dependent on the hyperparameters of the agents' deep neural networks (DNNs) thus enabling the agents to have different DNN architectures. Theoretically, the interactions between BGAN agents are analyzed as a game whose unique Nash equilibrium is derived. Experimental results show that BGAN can generate real-like data samples with higher quality and lower Jensen-Shannon divergence (JSD) and Fr\'echet Inception distance (FID) compared to other distributed GAN architectures.
翻译:为实现高学习精度,必须用能够充分代表数据空间的大型数据集来充实基因对抗网络(GANs),然而,在许多情况下,现有的数据集可能有限,而且分布在多个代理商,每个代理商都试图自己了解数据分布情况。在这样的情况下,本地数据集本质上是私有的,代理商往往不愿意分享这些数据。在本文中,为了解决这个多试办GAN问题,提议了一个新型的集思广益GAN(BGAN)结构,其中多个代理商可以生成真实的数据样本,同时以充分分布的方式运行并保护其数据隐私。BGAN允许这些代理商从其他代理商那里获取信息,而不必分享其真实数据集,而是通过共享生成的数据样本来“集思广益 ” 。与现有的分布式GAN解决方案相比,拟议的BGAN结构设计要完全分布,不需要任何中央控制器。此外,BGANs(DNIS) 显示,多个代理商可以缩缩缩缩和不依赖高级内基网络(DNIS)的超直径测量仪(DNIS-NIS),因此,使得G的BAN的代理商能够将结果转化为BNISAL-NURARC(B的代理商和BARCal-NLA)进行不同的结果。