基于负载均衡的分布式图聚类

He Sun, Luca Zanetti
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引用次数: 8

摘要

图聚类是一个基本的计算问题,在算法设计、机器学习、数据挖掘和社交网络分析中有许多应用。在过去的几十年里,研究人员提出了许多图聚类的算法设计方法。然而,这些方法大多是基于复杂的谱技术或凸优化,不能直接应用于实际中发生的许多网络的聚类,这些网络的信息通常是在不同的站点上收集的。设计一种简单的分布式聚类算法在处理大数据集方面具有广泛的应用前景。在本文中,我们提出了一种简单的分布式图聚类算法:对于一类具有强聚类结构特征的图,我们的算法在多对数轮数内完成,并恢复图的一个接近最优划分的分区。该算法的主要组成部分是负载均衡的随机匹配模型的应用,负载均衡是分布式计算的基本协议,在过去的20年里得到了广泛的研究。因此,我们的结果突出了图聚类和负载平衡之间的内在和有趣的联系。在技术层面上,我们提出了一个纯代数的结果,描述了显示集群结构的图的负载平衡过程的早期行为。我们相信这一结果可以进一步应用于分析其他八卦过程,如谣言传播和平均过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Graph Clustering by Load Balancing
Graph clustering is a fundamental computational problem with a number of applications in algorithm design, machine learning, data mining, and analysis of social networks. Over the past decades, researchers have proposed a number of algorithmic design methods for graph clustering. However, most of these methods are based on complicated spectral techniques or convex optimisation, and cannot be applied directly for clustering many networks that occur in practice, whose information is often collected on different sites. Designing a simple and distributed clustering algorithm is of great interest, and has wide applications for processing big datasets. In this paper we present a simple and distributed algorithm for graph clustering: for a wide class of graphs that are characterised by a strong cluster-structure, our algorithm finishes in a poly-logarithmic number of rounds, and recovers a partition of the graph close to an optimal partition. The main component of our algorithm is an application of the random matching model of load balancing, which is a fundamental protocol in distributed computing and has been extensively studied in the past 20 years. Hence, our result highlights an intrinsic and interesting connection between graph clustering and load balancing. At a technical level, we present a purely algebraic result characterising the early behaviours of load balancing processes for graphs exhibiting a cluster-structure. We believe that this result can be further applied to analyse other gossip processes, such as rumour spreading and averaging processes.
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