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Cooperative Convex Optimization in Networked Systems: Augmented Lagrangian Algorithms with Directed Gossip Communication

机译:网络系统中的协同凸优化:具有直接八卦通讯的增强拉格朗日算法

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摘要

We study distributed optimization in networked systems, where nodes cooperate to find the optimal quantity of common interest, x = x*. The objective function of the corresponding optimization problem is the sum of private (known only by a node), convex, nodes\u27 objectives and each node imposes a private convex constraint on the allowed values of x. We solve this problem for generic connected network topologies with asymmetric random link failures with a novel distributed, de-centralized algorithm. We refer to this algorithm as AL-G (augmented Lagrangian gossiping), and to its variants as AL-MG (augmented Lagrangian multi neighbor gossiping) and AL-BG (augmented Lagrangian broadcast gossiping). The AL-G algorithm is based on the augmented Lagrangian dual function. Dual variables are updated by the standard method of multipliers, at a slow time scale. To update the primal variables, we propose a novel, Gauss-Seidel type, randomized algorithm, at a fast time scale. AL-G uses unidirectional gossip communication, only between immediate neighbors in the network and is resilient to random link failures. For networks with reliable communication (i.e., no failures), the simplified, AL-BG (augmented Lagrangian broadcast gossiping) algorithm reduces communication, computation and data storage cost. We prove convergence for all proposed algorithms and demonstrate by simulations the effectiveness on two applications: l1-regularized logistic regression for classification and cooperative spectrum sensing for cognitive radio networks.
机译:我们研究网络系统中的分布式优化,其中节点协作以找到共同感兴趣的最优数量x = x *。相应优化问题的目标函数是私有(仅由节点知道),凸目标,凸目标的总和,并且每个节点对x的允许值施加私有凸约束。我们使用一种新颖的分布式,分散式算法,为具有非对称随机链路故障的通用连接网络拓扑解决了该问题。我们将此算法称为AL-G(增强型Lagrangian闲话),并将其变体称为AL-MG(增强型Lagrangian多邻居闲话)和AL-BG(增强型Lagrangian广播闲话)。 AL-G算法基于增强的拉格朗日对偶函数。对偶变量通过标准的乘法器方法以较慢的时间尺度进行更新。为了更新原始变量,我们提出了一种新颖的,高斯-塞德尔型随机算法,可以在快速的时间尺度上进行。 AL-G仅在网络的直接邻居之间使用单向八卦通信,并且可以抵抗随机链路故障。对于具有可靠通信(即无故障)的网络,简化的AL-BG(增强的拉格朗日广播八卦)算法减少了通信,计算和数据存储成本。我们证明了所有提出的算法的收敛性,并通过仿真证明了在两种应用中的有效性:用于分类的l1规则对数回归和用于认知无线电网络的协作频谱感知。

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