We develop a methodology to automatically compute worst-case performance bounds for a class of decentralized optimization algorithms that optimize the average of local functions distributed across a network. We extend to decentralized optimization the recently proposed PEP approach, which allows computing the exact worst-case performance and worst-case instance of centralized algorithms by solving an SDP. We obtain an exact formulation when the network matrix is given and a relaxation for classes of network matrices characterized by their spectral range. We apply our methodology to the distributed (sub)gradient method, obtain a nearly tight worst-case performance bound that significantly improves over the literature, and gain insights into the worst communication networks for a given spectral range.
翻译:我们开发了一种方法,自动计算最坏的性能极限,用于一系列分散化优化算法,优化分布在网络上的当地功能的平均数。我们将最近提出的PEP方法推广到分散化优化,通过解决 SDP 计算准确的最坏性能和最坏的集中式算法。我们得到精确的表述,当网络矩阵被给出时,对以光谱范围为特征的网络矩阵类别进行放松。我们将我们的方法应用到分布式(子)分级法,获得近乎紧凑的最坏性能约束,大大改进文献,并深入了解特定光谱范围最坏的通信网络。