论文标题
与协作继电器的半十分居住的联合学习
Semi-Decentralized Federated Learning with Collaborative Relaying
论文作者
论文摘要
我们提出了一种半居中的联合学习算法,其中客户通过将邻居的本地更新转移到中央参数服务器(PS)来协作。在每个客户端的每一个通信中,每个客户端都会从其邻近客户端计算更新的本地共识,并最终将其自身更新的加权平均值以及其邻居的加权平均值传输到PS。我们适当地优化了这些平均权重,以确保PS的全局更新是公正的,并减少PS处的全局更新的差异,从而提高了收敛速度。数值模拟证实了我们的理论主张,并证明了客户与PS之间间歇性连通性的设置,在此,我们提出的算法与联合平均算法相比,我们提出的算法显示了提高的收敛率和准确性。
We present a semi-decentralized federated learning algorithm wherein clients collaborate by relaying their neighbors' local updates to a central parameter server (PS). At every communication round to the PS, each client computes a local consensus of the updates from its neighboring clients and eventually transmits a weighted average of its own update and those of its neighbors to the PS. We appropriately optimize these averaging weights to ensure that the global update at the PS is unbiased and to reduce the variance of the global update at the PS, consequently improving the rate of convergence. Numerical simulations substantiate our theoretical claims and demonstrate settings with intermittent connectivity between the clients and the PS, where our proposed algorithm shows an improved convergence rate and accuracy in comparison with the federated averaging algorithm.