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Graph Partitioning in Parallelization of Large Scale Networks

机译:大规模网络并行化中的图划分

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Real world large scale networks exhibit intrinsic community structure, with dense intra-community connectivity and sparse inter-community connectivity. Leveraging their community structure for parallelization of computational tasks and applications, is a significant step towards computational efficiency and application effectiveness. We propose a weighted depth-first-search graph partitioning algorithm for community formation that preserves the needed community dependency without any cycles. To comply with heterogeneity in community structure and size of the real world networks, we use a flexible limiting value for them. Further, our algorithm is a diversion from the existing modularity based algorithms. We evaluate our algorithm as the quality of the generated partitions, measured in terms of number of graph cuts.
机译:现实世界中的大型网络具有固有的社区结构,具有密集的社区内部连通性和稀疏的社区间连通性。利用它们的社区结构来并行化计算任务和应用程序,是朝着计算效率和应用程序有效性迈出的重要一步。我们为社区形成提出了一种加权深度优先搜索图分区算法,该算法保留了所需的社区依赖性而没有任何循环。为了符合社区结构和现实网络规模的异质性,我们对它们使用了灵活的限制值。此外,我们的算法与现有的基于模块化的算法有所不同。我们将算法评估为生成的分区的质量,以图割的数量来衡量。

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