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Measurement and Analysis of Online Social Networks

机译:在线社交网络的测量与分析

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Online social networking sites like Orkut, YouTube, and Flickr axe among the most popular sites on the Internet. Users of these sites form a social network, which provides a powerful means of sharing, organizing, and finding content and contacts. The popularity of these sites provides an opportunity to study the characteristics of online social network graphs at large scale. Understanding these graphs is important, both to improve current systems and to design new applications of online social networks. This paper presents a large-scale measurement study and analysis of the structure of multiple online social networks. We examine data gathered from four popular online social networks: Flickr, YouTube, LiveJournal, and Orkut. We crawled the publicly accessible user links on each site, obtaining a large portion of each social network's graph. Our data set contains over 11.3 million users and 328 million links. We believe that this is the first study to examine multiple online social networks at scale. Our results confirm the power-law, small-world, and scale-free properties of online social networks. We observe that the indegree of user nodes tends to match the outdegree; that the networks contain a densely connected core of high-degree nodes; and that this core links small groups of strongly clustered, low-degree nodes at the fringes of the network. Finally, we discuss the implications of these structural properties for the design of social network based systems.
机译:在互联网上最受欢迎的网站中的Orkut,YouTube和Flickr Ax等在线社交网站。这些网站的用户构成了一个社交网络,它提供了一种强大的共享,组织和查找内容和联系方式的方法。这些网站的普及提供了在大规模中研究在线社交网络图的特征。了解这些图表是重要的,可以改进当前系统并设计在线社交网络的新应用。本文提出了大规模的测量研究和分析了多个在线社交网络的结构。我们检查从四个流行的在线社交网络收集的数据:Flickr,Youtube,Livejournal和Orkut。我们在每个站点上爬行公开访问的用户链接,获取每个社交网络的大部分。我们的数据集包含超过1130万用户和32800万个链接。我们认为这是第一次在规模上检查多个在线社交网络的研究。我们的结果证实了在线社交网络的职权,小世界和无规模属性。我们观察到用户节点的Indegree往往与仓库相匹配;网络包含高度节点的密集连接核心;并且该核心在网络的条件下将小型集群的低度节点联系起来。最后,我们讨论了这些结构特性对基于社交网络的设计的影响。

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