A mathematical model for friend discovery from dynamic social graphs

C. Leung, S. Singh
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引用次数: 4

Abstract

Nowadays, social networking is popular. As such, numerous social networking sites (e.g., Facebook, YouTube, Instagram) are generating very large volumes of social data rapidly. Valuable knowledge and information is embedded into these big social data, and is awaiting to be analyzed and mined via social network analysis and mining. In general, social networks can be represented as graphs. Because of the dynamic nature of social networking, edges and/or vertices keep adding to (or deleting from) the graphs. We present in this paper a mathematical model for friend discovery from dynamic social graphs. In particular, we focus on both linear algebra and graph theory approaches to discover interesting social entities---such as active followers---from dynamic social networks represented as dynamic directional social graphs.
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动态社交图谱中朋友发现的数学模型
如今,社交网络很受欢迎。因此,许多社交网站(如Facebook、YouTube、Instagram)正在迅速产生大量的社交数据。有价值的知识和信息被嵌入到这些大的社交数据中,等待着通过社交网络分析和挖掘进行分析和挖掘。一般来说,社交网络可以用图形表示。由于社交网络的动态特性,边和/或顶点不断添加(或删除)图。本文提出了一个从动态社交图中发现朋友的数学模型。特别是,我们专注于线性代数和图论方法来发现有趣的社会实体——比如活跃的追随者——从动态定向社交图表示的动态社交网络。
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