Direction-optimizing label propagation and its application to community detection

Xu T. Liu, M. Halappanavar, K. Barker, A. Lumsdaine, A. Gebremedhin
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引用次数: 3

Abstract

Label Propagation, while more commonly known as a machine learning algorithm for classification, is also an effective method for detecting communities in networks. We propose a new Direction Optimizing Label Propagation Algorithm (DOLPA) that relies on the use of frontiers and alternates between label push and label pull operations to enhance the performance of the standard Label Propagation Algorithm (LPA). Specifically, DOLPA has parameters for tuning the processing order of vertices in a graph, which in turn reduces the number of edges visited and improves the quality of solution obtained. We apply DOLPA to the community detection problem, present the design and implementation of the algorithm, and discuss its shared-memory parallelization using OpenMP. Empirically, we evaluate our algorithm using synthetic graphs as well as real-world networks. Compared with the state-of-the-art Parallel Label Propagation algorithm, we achieve at least two times the F-Score while reducing the runtime by 50% for synthetic graphs with overlapping communities. We also compare DOLPA against state of the art parallel implementation of the Louvain method using the same graphs and show that DOLPA achieves about three times the F-Score at 10% the runtime.
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方向优化标签传播及其在社区检测中的应用
标签传播通常被称为分类的机器学习算法,也是检测网络中社区的有效方法。我们提出了一种新的方向优化标签传播算法(DOLPA),该算法依赖于边界的使用,并在标签推送和标签拉操作之间交替,以提高标准标签传播算法(LPA)的性能。具体来说,DOLPA具有调整图中顶点处理顺序的参数,从而减少了访问边的数量,提高了得到的解的质量。我们将DOLPA应用于社区检测问题,给出了该算法的设计与实现,并讨论了其在OpenMP下的共享内存并行化。根据经验,我们使用合成图和现实世界的网络来评估我们的算法。与最先进的并行标签传播算法相比,我们实现了至少两倍的F-Score,同时将具有重叠社区的合成图的运行时间减少了50%。我们还使用相同的图将DOLPA与Louvain方法的最先进的并行实现进行了比较,并显示DOLPA在10%的运行时达到了大约三倍的F-Score。
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