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(Semi-)External Algorithms for Graph Partitioning and Clustering

机译:(半)图形分区和聚类的外部算法

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In this paper, we develop semi-external and external memory algorithms for graph partitioning and clustering problems. Graph partitioning and clustering are key tools for processing and analyzing large complex networks. We address both problems in the (semi-)external model by adapting the size-constrained label propagation technique. Our (semi-)external size-constrained label propagation algorithm can be used to compute graph clusterings and is a prerequisite for the (semi-)external graph partitioning algorithm. The algorithm is then used for both the coarsening and the refinement phase of a multilevel algorithm to compute graph partitions. Our algorithm is able to partition and cluster huge complex networks with billions of edges on cheap commodity machines. Experiments demonstrate that the semi-external graph partitioning algorithm is scalable and can compute high quality partitions in time that is comparable to the running time of an efficient internal memory implementation. A parallelization of the algorithm in the semi-external model further reduces running time.
机译:在本文中,我们开发了用于图形分区和聚类问题的半外部和外部存储器算法。图形分区和群集是用于处理和分析大型复杂网络的关键工具。我们通过调整大小约束标签传播技术来解决(半)外部模型中的两个问题。我们的(半)外部大小约束标签传播算法可用于计算图形群集,并且是(半)外图分区算法的先决条件。然后将该算法用于多级算法的粗化和细化阶段来计算图形分区。我们的算法能够在廉价商品机上与数十亿个边缘进行分区和集群庞大的复杂网络。实验表明,半外部图形分区算法是可伸缩的,可以在与高效内部存储器实现的运行时间相当的时间上计算高质量分区。算法在半外部模型中的并行化进一步减少了运行时间。

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