A Scalable Algorithm for Discovering Topologies in Social Networks

Jyoti Rani Yadav, D. Somayajulu, P. Krishna
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引用次数: 3

Abstract

Discovering topologies in a social network targets various business applications such as finding key influencers in a network, recommending music movies in virtual communities, finding active groups in network and promoting a new product. Since social networks are large in size, discovering topologies from such networks is challenging. In this paper, we present a scalable topology discovery approach using Giraph platform and perform (i) graph structural analysis and (ii) graph mining. For graph structural analysis, we consider various centrality measures. First, we find top-K centrality vertices for a specific topology (e.g. Star, ring and mesh). Next, we find other vertices which are in the neighborhood of top centrality vertices and then create the cluster based on structural density. We compare our clustering approach with DBSCAN algorithm on the basis of modularity parameter. The results show that clusters generated through structural density parameter are better in quality than generated through neighborhood density parameter.
社交网络拓扑发现的可扩展算法
在社交网络中发现拓扑针对各种业务应用程序,例如在网络中查找关键影响者、在虚拟社区中推荐音乐电影、在网络中查找活跃组以及推广新产品。由于社交网络的规模很大,从这样的网络中发现拓扑是具有挑战性的。在本文中,我们提出了一种使用Giraph平台的可扩展拓扑发现方法,并执行(i)图结构分析和(ii)图挖掘。对于图结构分析,我们考虑了各种中心性度量。首先,我们为一个特定的拓扑(如星形、环形和网格)找到top-K的中心性顶点。接下来,我们找到在最高中心性顶点附近的其他顶点,然后根据结构密度创建聚类。在模块化参数的基础上,与DBSCAN算法进行了比较。结果表明,采用结构密度参数生成的聚类质量优于采用邻域密度参数生成的聚类。
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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