Fast Gossip via Non-reversible Random Walk

Kyomin Jung, D. Shah
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引用次数: 12

Abstract

Distributed computation of average is essential for many tasks such as estimation, eigenvalue computation, scheduling in the context of wireless sensor and ad-hoc networks. The wireless communication imposes the gossip constraint: each node can communicate with at most one other node at a given time. Recent interest in emerging wireless sensor network has led to exciting developments in the context of gossip algorithms for averaging. Most of the known algorithms are iterative and based on certain reversible random walk on the network graph. Subsequently, the running time of algorithm is affected by the diffusive nature of reversible random walk. For example, they take Ω(n2) time to compute average on a simple path or ring graph of n nodes. In contrast, an optimal (simple) centralized algorithm takes [unk](n) time to compute average in a path. This raises the following questions: is it possible for a distributed algorithm to compute average in O(n) time for path graph? is it possible to improve over diffusive behavior of current algorithms in arbitrary graphs? In this paper, we answer the above questions in affirmative. To overcome the diffusive nature of algorithms, we utilize non-reversible random walks. Specifically, we design our algorithms by "projecting down" the "lifted" non-reversible random walks of Diaconis-Holmes-Neal (2000) and Chen-Lovasz-Pak (1999). The running time of our algorithm is square-root of the time taken by corresponding reversible random walk for a large class of graphs including path.
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通过不可逆随机漫步快速八卦
在无线传感器和ad-hoc网络中,分布式平均计算对于估计、特征值计算、调度等任务至关重要。无线通信施加了闲谈约束:每个节点在给定时间最多只能与另一个节点通信。最近对新兴无线传感器网络的兴趣导致了平均的八卦算法的令人兴奋的发展。大多数已知的算法都是迭代的,并且基于网络图上的某种可逆随机游走。随后,算法的运行时间受到可逆随机漫步的扩散特性的影响。例如,它们需要Ω(n2)时间来计算n个节点的简单路径或环状图的平均值。相比之下,最优(简单)集中式算法需要[unk](n)时间来计算路径中的平均值。这就提出了以下问题:分布式算法是否有可能在O(n)时间内计算路径图的平均值?是否有可能改善当前算法在任意图中的超扩散行为?本文对上述问题作了肯定的回答。为了克服算法的扩散性,我们使用了不可逆的随机漫步。具体来说,我们通过“向下投射”Diaconis-Holmes-Neal(2000)和Chen-Lovasz-Pak(1999)的“提升”的不可逆随机漫步来设计算法。算法的运行时间是包含路径的一大类图的可逆随机漫步时间的平方根。
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