Computing the Diameters of Huge Social Networks

Ting-Chun Lin, Mei-Jin Wu, Wei-Jie Chen, B. Wu
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引用次数: 5

Abstract

The diameter of a graph is the maximum distance among all pairs of nodes. Determining the diameter of a graph in the tradition way costs O(mn) time, where n is the number of nodes and m is the number of edges. A social network can be modelled as a graph. With the rapid expansion of social networks, the number of nodes in a social network could be hundreds of millions. In this paper, we propose a new approach for computing the diameters of large undirected unweighted graphs. The worst case time complexity is still O(mn). In practice, especially for social network graphs, the running time is O(m). Our approach is based on BFS to select a proper node as the starting node of a BFS process is the most important issue when computing the diameter. We show how to choose the good nodes with small cost.
计算巨大社会网络的直径
图的直径是所有节点对之间的最大距离。传统方法确定图的直径需要O(mn)时间,其中n为节点数,m为边数。一个社会网络可以用图来建模。随着社交网络的迅速扩张,一个社交网络的节点数量可能达到数亿个。本文提出了一种计算大型无向无权图直径的新方法。最坏情况下的时间复杂度仍然是0 (mn)。在实践中,特别是对于社交网络图,运行时间为O(m)。我们的方法是基于BFS来选择合适的节点,因为BFS过程的开始节点是计算直径时最重要的问题。我们展示了如何以较小的代价选择好节点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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