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A genetic algorithm approach for detecting hierarchical and overlapping community structure in dynamic social networks

机译:遗传算法在动态社交网络中检测层次结构和重叠社区结构的方法

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Social networks are merely a reflection of certain realities among people that have been identified. But in order for people or even computer systems (such as expert systems) to make sense of the social network, it needs to be analyzed with various methods so that the characteristics of the social network can be understood in a meaningful context. This is challenging not only due to the number of people that can be on social networks, but the changes in relationships between people on the social network over time. In this paper, we develop a method to help make sense of dynamic social networks. This is achieved by establishing a hierarchical community structure where each level represents a community partition at a specific granularity level. By organizing each level of the hierarchical community structure by granularity level, a person can essentially “zoom in” to view more detailed (smaller) communities and “zoom out” to view less detailed (larger) communities. Communities consisting of one or more subsets of people having relatively extensive links with other communities are identified and represented as overlapping community structures. Mechanisms are also in place to enable modifications to the social network to be dynamically updated on the hierarchical and overlapping community structure without recreating it in real time for every modification. The experimental results show that the genetic algorithm approach can effectively detect hierarchical and overlapping community structures.
机译:社交网络仅反映了已经确定的人们中的某些现实。但是,为了使人们甚至计算机系统(例如专家系统)理解社交网络,需要使用各种方法进行分析,以便可以在有意义的上下文中理解社交网络的特征。这不仅具有挑战性,不仅因为社交网络上的人数众多,而且随着时间的推移,社交网络上人们之间的关系也发生了变化。在本文中,我们开发了一种方法来帮助理解动态社交网络。这是通过建立分层的社区结构来实现的,其中每个级别代表特定粒度级别的社区分区。通过按粒度级别组织分层社区结构的每个级别,一个人可以实质上“放大”以查看更详细(较小)的社区,而“缩小”以查看较不详细(较大)的社区。标识由与其他社区具有相对广泛联系的一个或多个人子集组成的社区,并将其表示为重叠的社区结构。还建立了机制,使对社交网络的修改可以在层次结构和重叠的社区结构上动态更新,而无需为每次修改实时重新创建。实验结果表明,遗传算法可以有效地检测出层次和重叠的群落结构。

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