Gossip algorithms: design, analysis and applications

Stephen P. Boyd, Arpita Ghosh, B. Prabhakar, D. Shah
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引用次数: 596

Abstract

Motivated by applications to sensor, peer-to-peer and ad hoc networks, we study distributed asynchronous algorithms, also known as gossip algorithms, for computation and information exchange in an arbitrarily connected network of nodes. Nodes in such networks operate under limited computational, communication and energy resources. These constraints naturally give rise to "gossip" algorithms: schemes which distribute the computational burden and in which a node communicates with a randomly chosen neighbor. We analyze the averaging problem under the gossip constraint for arbitrary network, and find that the averaging time of a gossip algorithm depends on the second largest eigenvalue of a doubly stochastic matrix characterizing the algorithm. Using recent results of Boyd, Diaconis and Xiao (2003), we show that minimizing this quantity to design the fastest averaging algorithm on the network is a semi-definite program (SDP). In general, SDPs cannot be solved distributedly; however, exploiting problem structure, we propose a subgradient method that distributedly solves the optimization problem over the network. The relation of averaging time to the second largest eigenvalue naturally relates it to the mixing time of a random walk with transition probabilities that are derived from the gossip algorithm. We use this connection to study the performance of gossip algorithm on two popular networks: wireless sensor networks, which are modeled as geometric random graphs, and the Internet graph under the so-called preferential connectivity model.
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八卦算法:设计、分析和应用
受传感器、点对点和自组织网络应用的启发,我们研究了分布式异步算法,也称为八卦算法,用于在任意连接的节点网络中进行计算和信息交换。这种网络中的节点在有限的计算、通信和能源资源下运行。这些约束自然产生了“八卦”算法:分配计算负担的方案,其中节点与随机选择的邻居通信。分析了任意网络在八卦约束下的平均问题,发现八卦算法的平均时间取决于描述该算法的双随机矩阵的第二大特征值。利用Boyd, Diaconis和Xiao(2003)的最新结果,我们表明最小化该数量以设计网络上最快的平均算法是一个半确定程序(SDP)。一般情况下,sdp不能分布式求解;然而,利用问题结构,我们提出了一种亚梯度方法,在网络上分布式地解决优化问题。平均时间与第二大特征值的关系自然地将其与随机游走的混合时间联系起来,该混合时间具有由八卦算法导出的转移概率。我们使用这种连接来研究两种流行网络上的流言算法的性能:无线传感器网络,它被建模为几何随机图,以及所谓的优先连接模型下的互联网图。
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