The distributed convex optimization problem over the multi-agent system is considered in this paper, and it is assumed that each agent possesses its own cost function and communicates with its neighbours over a sequence of time-varying directed graphs. However, due to some reasons there exist communication delays while agents receive information from other agents, and we are going to seek the optimal value of the sum of agents' loss functions in this case. We desire to handle this problem with the push-sum distributed dual averaging (PS-DDA) algorithm which is introduced in \cite{Tsianos2012}. It is proved that this algorithm converges and the error decays at a rate $\mathcal{O}\left(T^{-0.5}\right)$ with proper step size, where $T$ is iteration span. The main result presented in this paper also illustrates the convergence of the proposed algorithm is related to the maximum value of the communication delay on one edge. We finally apply the theoretical results to numerical simulations to show the PS-DDA algorithm's performance.
翻译:本文考虑了多试剂系统中的分布式锥形优化问题,并假定每个代理商都有自己的成本功能,并通过一系列时间变化方向图表与邻国进行通信。然而,由于某些原因,代理商从其他代理商处获得信息时,通信出现延误,因此我们将寻求本案中代理商损失功能总和的最佳价值。我们希望处理在\cite{Tsianos2012}中引入的双向平均(PS-DAD)算法(PS-DA)中的问题。我们最后将理论结果应用于数字模拟,以显示PS-DDA算法的性能。