Centrality Approach for Community Detection in Large Scale Network

R. Behera, Debadatta Naik, Bibhudatta Sahoo, S. K. Rath
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引用次数: 7

Abstract

Identifying communities in social network plays an important role in predicting behavior of the complex network. Real world systems in social network can be modeled as a graph structure, where nodes represents the social entities and edges represents the relationships among the entities. Usually nodes inside a community are having similar kinds of properties and most of them are influence by one or more central nodes in the network. Hence centrality principle can be adapted for efficiently discovery of communities. In this paper, an attempt has been made for community detection using central nodes of the network. Discovering central nodes in large scale network is a challenging task due to its huge complex structure. Central nodes have been been identified using map reduce paradigm in order to carry out the computation in distributed manner. The process of discovering communities is then carried out using the identified central nodes. Experimental evaluation shows that the proposed method for community detection provides better performance in term of both accuracy and time complexity.
大规模网络中社区检测的中心性方法
识别社会网络中的社区对于预测复杂网络的行为具有重要作用。社会网络中的现实世界系统可以建模为一个图结构,其中节点表示社会实体,边表示实体之间的关系。通常,社区内的节点具有类似的属性,其中大多数都受网络中一个或多个中心节点的影响。因此,中心性原则可以用于有效地发现社区。本文尝试利用网络的中心节点进行社区检测。大型网络由于其庞大复杂的结构,中心节点的发现是一项具有挑战性的任务。为了以分布式的方式进行计算,采用map - reduce范式确定了中心节点。然后使用确定的中心节点执行发现社区的过程。实验结果表明,该方法在准确率和时间复杂度方面都有较好的性能。
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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