大型网络中主要社区的交互式可视化摘要

Yanhong Wu, Wenbin Wu, Sixiao Yang, Youliang Yan, Huamin Qu
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引用次数: 8

摘要

在本文中,我们介绍了一种新颖的可视化方法,它允许人们在大型网络中探索、比较和提炼主要社区。我们首先使用数据挖掘和社区分析方法检测网络中的主要社区。然后,计算并存储各群落的统计属性、群落间的关系强度以及连接这些群落的边界节点。我们提出了一种基于Voronoi树图的新方法,用一个多边形编码每个群落,多边形的相对位置编码它们的关系强度。不同的社区属性可以通过多边形的形状、大小和颜色进行编码。进一步提出了一种基于群体属性调整多边形平滑度的切角方法。为了容纳边界节点,通过多边形收缩算法加宽多边形之间的间隙,使边界节点可以方便地嵌入到新创建的空间中。该方法非常高效,用户可以测试不同的社区检测算法,对结果进行微调,并交互式地探索社区之间的模糊关系。两个真实数据集的案例研究表明,我们的方法可以提供大型网络中主要社区的可视化总结,并帮助人们更好地了解每个社区的特征,并检查社区之间的各种关系模式。
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Interactive visual summary of major communities in a large network
In this paper, we introduce a novel visualization method which allows people to explore, compare and refine the major communities in a large network. We first detect major communities in a network using data mining and community analysis methods. Then, the statistics attributes of each community, the relational strength between communities, and the boundary nodes connecting those communities are computed and stored. We propose a novel method based on Voronoi treemap to encode each community with a polygon and the relative positions of polygons encode their relational strengths. Different community attributes can be encoded by polygon shapes, sizes and colors. A corner-cutting method is further introduced to adjust the smoothness of polygons based on certain community attribute. To accommodate the boundary nodes, the gaps between the polygons are widened by a polygon-shrinking algorithm such that the boundary nodes can be conveniently embedded into the newly created spaces. The method is very efficient, enabling users to test different community detection algorithms, fine tune the results, and explore the fuzzy relations between communities interactively. The case studies with two real data sets demonstrate that our approach can provide a visual summary of major communities in a large network, and help people better understand the characteristics of each community and inspect various relational patterns between communities.
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