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Large Scale Cohesive Subgraphs Discovery for Social Network Visual Analysis

机译:用于社交网络视觉分析的大规模内聚子图发现

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Graphs are widely used in large scale social network analysis nowadays. Not only analysts need to focus on cohesive subgraphs to study patterns among social actors, but also normal users are interested in discovering what happening in their neighborhood. However, effectively storing large scale social network and efficiently identifying cohesive subgraphs is challenging. In this work we introduce a novel subgraph concept to capture the cohesion in social interactions, and propose an I/O efficient approach to discover cohesive subgraphs. Besides, we propose an analytic system which allows users to perform intuitive, visual browsing on large scale social networks. Our system stores the network as a social graph in the graph database, retrieves a local cohesive subgraph based on the input keywords, and then hierarchically visualizes the subgraph out on orbital layout, in which more important social actors are located in the center. By summarizing textual interactions between social actors as tag cloud, we provide a way to quickly locate active social communities and their interactions in a unified view.
机译:如今,图形已广泛用于大规模的社交网络分析中。分析师不仅需要关注内聚的子图来研究社会行为者之间的模式,而且普通用户也有兴趣发现他们周围发生的事情。然而,有效地存储大规模社交网络并有效地识别内聚子图是具有挑战性的。在这项工作中,我们引入了一种新颖的子图概念来捕获社交互动中的内聚力,并提出了一种I / O有效的方法来发现内聚子图。此外,我们提出了一种分析系统,该系统允许用户在大型社交网络上执行直观,可视的浏览。我们的系统将网络作为社交图存储在图数据库中,根据输入的关键字检索局部内聚子图,然后在轨道布局上将子图分层可视化,其中更重要的社交参与者位于中心。通过将社会参与者之间的文本交互概括为标签云,我们提供了一种在统一视图中快速定位活跃的社会社区及其交互的方法。

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