动态社会网络中Top k社区检测的新算法

P. M, R. R, P. Pabitha
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引用次数: 1

摘要

在动态的非正式网络中,信息随时间的变化而变化。通过基于社区的模型识别网络中的子网或社区,实现了对每个节点存在的信息进行区分的方法。为了提高公用事业容量,还估计了建立网络的程度。关于网络的信息将是未知的,因此拓扑的性质和动态社会网络(DSN)中的不稳定数据。使从大网络中寻找社区的成本最大化,减少寻找社区的成本支出;提出了一种新的基于贪心的算法。K值决定了将要形成的群落总数。基于网络的模型预测了所提出的网络策略中的个体,同样可以区分基于网络的模型,该模型可以有效地捕捉基本开口扳手的质量,并降低大规模系统中的连接维护成本。与现有的分层和派系普查社区检测方法相比,Top-k贪婪方法降低了寻找最优社区的成本,其最优成本为42.6 %。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Algorithm for Top- k Community Detection In Dynamic Social Networks
In dynamic informal networks change the information prevailing inside them in perspective with time. An approach to distinguish the information existed in each nodes was achieved by recognizing the subnetworks or Communities inside the network through Community-Based models. To increase the utility capacity also estimated the degree to networks that are founded. The information about the networks will be not known and consequently the nature of the topology and instability data inside a Dynamic Social Network(DSN). It maximized the cost of finding the communities from the large networks and to reduce the cost expenditure in finding the communities; a novel greedy based approach has been proposed. The K values determine the total number of communities that are to be formed. The Network-based model foresee the individuals from the networks proposed strategy will likewise distinguish the network -based model that can catch the qualities of basic opening spanners productively and decline the connection upkeep cost in the extensive scale systems. An decrease in the cost of finding the optimal communities in comparison with the existing hierarchical and Clique census community detection approaches was achieved by the Top-k greedy approach with an optimal cost percent of 42.6.
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