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Discovering, Visualizing and Evaluating Online Bipartite Communities

机译:发现,可视化和评估在线二分支社区

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Discovering communities from networks is one of the important techniques for intelligent Web interaction. Most of the previous methods for discovering communities are for homogeneous networks composed of only one type of vertices. In real world situations, however, there are many heterogeneous networks composed of more than one types of vertices. This paper describes our attempts for discovering, visualizing and evaluating communities from bipartite networks. A biparite network is projected to two homogeneous networks, and communities are discovered from each of the networks. The communites are visualized on two windows in order to clarify the correspondence between communities of different vertex types. Discovered communities are then evaluated by bipartite modularity. These attempts will clarify the overall structure of given networks and contribute to the interactive exploration of online activities.
机译:从网络发现社区是智能网络交互的重要技术之一。以前发现社区的大多数方法是仅由一种类型的顶点组成的同类网络。然而,在现实世界的情况下,许多异构网络由多种类型的顶点组成。本文介绍了我们发现,可视化和评估二分网络的社区的尝试。比例网络被投影到两个同质网络,并且从每个网络发现社区。在两个窗口上可视化社区,以澄清不同顶点类型的社区之间的对应关系。然后通过双链模块化来评估发现的社区。这些尝试将阐明给定网络的整体结构,并有助于对在线活动的互动探索。

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