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引用次数: 137

摘要

平衡边缘划分已经成为一种新的划分输入图数据的方法,用于扩展并行计算,这是一些现代数据分析计算平台感兴趣的,包括迭代计算平台,机器学习问题和图数据库。这种新方法与传统的平衡顶点划分方法形成鲜明对比,在传统的平衡顶点划分方法中,对于给定数量的分区,问题是在平衡分区的顶点基数的情况下最小化被切割的边的数量。在本文中,我们首先描述了通常部署的将顶点或边缘均匀随机放置到其中一个分区的策略下,在有和没有消息聚合的情况下,顶点和边缘分区的预期成本。然后,我们获得了平衡边划分问题的第一个近似算法,该算法在没有聚合的情况下与平衡顶点划分问题的最佳已知近似比相匹配,并表明这仍然适用于聚合因子等于顶点的最大in-degree的情况。我们报告了一组真实世界图的广泛经验评估结果,量化了边缘与顶点划分的好处,并证明了自然贪婪在线分配在有和没有聚合的平衡边缘划分问题上的效率。
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Balanced graph edge partition
Balanced edge partition has emerged as a new approach to partition an input graph data for the purpose of scaling out parallel computations, which is of interest for several modern data analytics computation platforms, including platforms for iterative computations, machine learning problems, and graph databases. This new approach stands in a stark contrast to the traditional approach of balanced vertex partition, where for given number of partitions, the problem is to minimize the number of edges cut subject to balancing the vertex cardinality of partitions. In this paper, we first characterize the expected costs of vertex and edge partitions with and without aggregation of messages, for the commonly deployed policy of placing a vertex or an edge uniformly at random to one of the partitions. We then obtain the first approximation algorithms for the balanced edge-partition problem which for the case of no aggregation matches the best known approximation ratio for the balanced vertex-partition problem, and show that this remains to hold for the case with aggregation up to factor that is equal to the maximum in-degree of a vertex. We report results of an extensive empirical evaluation on a set of real-world graphs, which quantifies the benefits of edge- vs. vertex-partition, and demonstrates efficiency of natural greedy online assignments for the balanced edge-partition problem with and with no aggregation.
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