Scalable static and dynamic community detection using Grappolo

M. Halappanavar, Hao Lu, A. Kalyanaraman, Antonino Tumeo
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引用次数: 32

Abstract

Graph clustering, popularly known as community detection, is a fundamental kernel for several applications of relevance to the Defense Advanced Research Projects Agency's (DARPA) Hierarchical Identify Verify Exploit (HIVE) Program. Clusters or communities represent natural divisions within a network that are densely connected within a cluster and sparsely connected to the rest of the network. The need to compute clustering on large scale data necessitates the development of efficient algorithms that can exploit modern architectures that are fundamentally parallel in nature. However, due to their irregular and inherently sequential nature, many of the current algorithms for community detection are challenging to parallelize. In response to the HIVE Graph Challenge, we present several parallelization heuristics for fast community detection using the Louvain method as the serial template. We implement all the heuristics in a software library called Grappolo. Using the inputs from the HIVE Challenge, we demonstrate superior performance and high quality solutions based on four parallelization heuristics. We use Grappolo on static graphs as the first step towards community detection on streaming graphs.
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可扩展的静态和动态社区检测使用Grappolo
图聚类,通常被称为社区检测,是与国防高级研究计划局(DARPA)分层识别验证漏洞(HIVE)计划相关的几个应用程序的基本内核。集群或社区代表网络内的自然分区,这些分区在集群内紧密相连,与网络的其他部分稀疏相连。在大规模数据上计算集群的需要需要开发高效的算法,这些算法可以利用本质上基本并行的现代架构。然而,由于其不规则性和固有的序列性,许多现有的社区检测算法在并行化方面存在挑战。为了应对HIVE图挑战,我们提出了几种以Louvain方法为串行模板的并行化启发式快速社区检测方法。我们在一个名为Grappolo的软件库中实现了所有的启发式算法。利用HIVE Challenge的输入,我们展示了基于四种并行化启发式的卓越性能和高质量解决方案。我们在静态图上使用Grappolo作为在流图上进行社区检测的第一步。
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