作者
David A Bader, Kamesh Madduri
发表日期
2006/8/14
研讨会论文
2006 International Conference on Parallel Processing (ICPP'06)
页码范围
539-550
出版商
IEEE
简介
This paper discusses fast parallel algorithms for evaluating several centrality indices frequently used in complex network analysis. These algorithms have been optimized to exploit properties typically observed in real-world large scale networks, such as the low average distance, high local density, and heavy-tailed power law degree distributions. We test our implementations on real datasets such as the web graph, protein-interaction networks, movie-actor and citation networks, and report impressive parallel performance for evaluation of the computationally intensive centrality metrics (betweenness and closeness centrality) on high-end shared memory symmetric multiprocessor and multithreaded architectures. To our knowledge, these are the first parallel implementations of these widely-used social network analysis metrics. We demonstrate that it is possible to rigorously analyze networks three orders of …
引用总数
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学术搜索中的文章
DA Bader, K Madduri - 2006 International Conference on Parallel Processing …, 2006