We establish a connection between federated learning, a concept from machine learning, and mean-field games, a concept from game theory and control theory. In this analogy, the local federated learners are considered as the players and the aggregation of the gradients in a central server is the mean-field effect. We present federated learning as a differential game and discuss the properties of the equilibrium of this game. We hope this novel view to federated learning brings together researchers from these two distinct areas to work on fundamental problems of large-scale distributed and privacy-preserving learning algorithms.
翻译:我们建立了联盟式学习之间的联系,一个来自机器学习的概念,一个来自游戏理论和控制理论的概念,一个来自游戏理论和控制理论的概念。在这个类比中,当地联盟式学习者被视为玩家,中央服务器中梯度的汇总是平均效果。我们把联盟式学习作为一种不同的游戏来介绍,并讨论游戏平衡的特性。我们希望这种新颖的结合式学习观点能把来自这两个不同领域的研究人员聚集在一起,研究大规模分布式和隐私保护学习算法的根本问题。