基于边缘内容的社交媒体网络社区检测

Guo-Jun Qi, C. Aggarwal, Thomas S. Huang
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引用次数: 160

摘要

社交媒体中的社区检测问题在底层图结构的背景下得到了广泛的研究。大多数社区检测算法使用节点之间的链接来确定图中的密集区域。这些密集的区域就是图中的社交媒体社区。这些方法通常纯粹基于底层社交媒体网络的链接结构。然而,在最近的许多应用中,边缘内容是可用的,以便为社区检测过程提供更好的监督。在社交互动中,许多边缘的自然表示,如共享的图像和视频、用户标签和评论,都自然地与边缘上的内容相关联。虽然在利用节点内容进行社区检测方面已经做了一些工作,但边缘内容的存在为社区检测过程提供了前所未有的机会和灵活性。我们将展示,可以利用这些边缘内容,以大大提高社交媒体网络中社区检测过程的有效性。我们给出的实验结果说明了我们的方法的有效性。
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Community Detection with Edge Content in Social Media Networks
The problem of community detection in social media has been widely studied in the social networking community in the context of the structure of the underlying graphs. Most community detection algorithms use the links between the nodes in order to determine the dense regions in the graph. These dense regions are the communities of social media in the graph. Such methods are typically based purely on the linkage structure of the underlying social media network. However, in many recent applications, edge content is available in order to provide better supervision to the community detection process. Many natural representations of edges in social interactions such as shared images and videos, user tags and comments are naturally associated with content on the edges. While some work has been done on utilizing node content for community detection, the presence of edge content presents unprecedented opportunities and flexibility for the community detection process. We will show that such edge content can be leveraged in order to greatly improve the effectiveness of the community detection process in social media networks. We present experimental results illustrating the effectiveness of our approach.
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