一种快速的平衡图聚类算法

M. Huang, Quang Vinh Nguyen
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引用次数: 23

摘要

可伸缩性问题是信息可视化和图形绘制社区长期面临的挑战。现有的图形可视化技术可以很好地处理中小型图形,但它们很少能够处理非常大和复杂的图形。图抽象是解决这一问题的有效方法之一;即将完全图分层划分为聚类图。然后应用图形可视化技术来显示这个聚类图的抽象视图,并部分显示用户当前关注的一个或几个子图的详细信息。这降低了显示的复杂性,使用户更容易解释、感知和浏览大规模信息。本文提出了一种图聚类方法,该方法可以快速发现嵌入在大型图中的群体结构,并将图划分为紧密连接的子图。该算法不仅运行速度快,而且能够获得一致的划分结果,即将一个图划分为一组在视觉复杂度、节点数和边数方面相似的簇。此外,我们还提供了一种机制来划分非常密集的图,其中边的数量远远大于节点的数量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Fast Algorithm for Balanced Graph Clustering
Scalability problem is a long-lasting challenge for both information visualization and graph drawing communities. Available graph visualization techniques could perform well for small or medium size graphs but they are rarely able to handle very large and complex graphs. One of effective approach to solve this problem is to employ graph abstraction; that is to hierarchically partitioning the complete graph into a clustered graph. A graph visualization technique is then applied to display the abstract view of this clustered graph with partially displayed detail of one or a few sub-graphs where the user is currently focusing on. This reduces the complexity of display and makes it easier for users to interpret, perceive and navigate the large scale information. In this paper, we propose a graph clustering method which can quickly discover the community structure embedded in large graphs and partition the graph into densely connected sub-graphs. The proposed algorithm can not only run fast, but also achieve a consistent partitioning result in which a graph is divided into a set of clusters of the similar size in terms of their visual complexity and the number of nodes and edges. In addition, we also provide a mechanism to partition very dense graphs in which the number of edges is much larger than the number of nodes.
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