An Efficient Parallel Algorithm for Computing the Closeness Centrality in Social Networks

P. Du, N. Chau, K. Nguyen, N. Nguyen
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引用次数: 5

Abstract

Closeness centrality is an substantial metric used in large-scale network analysis, in particular social networks. Determining closeness centrality from a vertex to all other vertices in the graph is a high complexity problem. Prior work has a strong focuses on the algorithmic aspect of the problem, and little attention has been paid to the definition of the data structure supporting the implementation of the algorithm. Thus, we present in this paper an efficient algorithm to compute the closeness centrality of all nodes in a social network. Our algorithm is based on (i) an appropriate data structure for increasing the cache hit rate, and then reducing amount of time accessing the main memory for the graph data, and (ii) an efficient and parallel complete BFS search to reduce the execution time. We tested performance of our algorithm, namely BigGraph, with five different real-world social networks and compare the performance to that of current approaches including TeexGraph and NetworKit. Experiment results show that BigGraph is faster than TeexGraph and NetworKit 1.27-2.12 and 14.78-68.21 times, respectively.
一种计算社交网络亲密度中心性的高效并行算法
亲密中心性是大规模网络分析中使用的重要度量,特别是社会网络。确定图中一个顶点到所有其他顶点的接近中心性是一个高度复杂的问题。先前的工作强烈关注问题的算法方面,而很少关注支持算法实现的数据结构的定义。因此,我们提出了一种有效的算法来计算社交网络中所有节点的接近中心性。我们的算法是基于(i)一个适当的数据结构,以提高缓存命中率,然后减少访问主内存的时间为图形数据,和(ii)一个有效的和并行的完整BFS搜索,以减少执行时间。我们在五种不同的现实世界社交网络上测试了我们的算法,即BigGraph的性能,并将其与现有方法(包括texgraph和NetworKit)的性能进行了比较。实验结果表明,BigGraph比texgraph和NetworKit分别快1.27 ~ 2.12倍和14.78 ~ 68.21倍。
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