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Identification of influential nodes from social networks based on Enhanced Degree Centrality Measure

机译:基于增强程度的中心度量的社交网络识别来自社交网络的影响

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A social network is a set of relationships and interactions among social entities such as individuals, organizations, and groups. The social network analysis is one of the major topics in the ongoing research field. The major problem regarding the social network is finding the most influential objects or persons. Identification of most influential nodes in a social network is a tedious task as large numbers of new users join the network every day. The most commonly used method is to consider the social network as a graph and find the most influential nodes by analyzing it. The degree centrality method is node based and has the advantage of easy identification of most influential nodes. In this paper a method called “Enhanced Degree Centrality Measure” is proposed which integrates clustering co-efficient value along with node based degree centrality. The enhanced degree centrality measure is applied to three different datasets which are obtained from the Facebook to analyze the performance. The response obtained is compared with existing methods such as degree centrality method and SPIN algorithm. By comparison, it is found that highest number of active nodes identified by the proposed method is 64 when compared with SPIN algorithm which identifies only 55.
机译:社交网络是社会实体之间的一系列关系和互动,例如个人,组织和团体。社会网络分析是正在进行的研究领域的主要主题之一。关于社交网络的主要问题是找到最有影响力的物体或人。识别社交网络中大多数有影响力的节点是一项繁琐的任务,因为大量新用户每天加入网络。最常用的方法是将社交网络视为图形,并通过分析它找到最有影响力的节点。程度中心方法是基于节点的,并且具有易于识别大多数有影响性节点的优点。在本文中,提出了一种称为“增强程度中心度量”的方法,该方法集成了聚类共效值以及基于节点的程度中心。增强程度的中心度量措施应用于从Facebook获得的三个不同的数据集,以分析性能。将获得的响应与现有方法进行比较,例如程度中心法和旋转算法。通过比较,发现与仅识别55的自旋算法相比,通过所提出的方法识别的最高数量的有效节点是64。

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