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Understanding Latent Interactions in Online Social Networks

机译:了解在线社交网络中的潜在互动

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Popular online social networks (OSNs) like Facebook and Twitter are changing the way users communicate and interact with the Internet. A deep understanding of user interactions in OSNs can provide important insights into questions of human social behavior, and into the design of social platforms and applications. However, recent studies have shown that a majority of user interactions on OSNs are latent interactions, passive actions such as profile browsing that cannot be observed by traditional measurement techniques. In this paper, we seek a deeper understanding of both visible and latent user interactions in OSNs. For quantifiable data on latent user interactions, we perform a detailed measurement study on Renren, the largest OSN in China with more than 150 million users to date. All friendship links in Renren are public, allowing us to exhaustively crawl a connected graph component of 42 million users and 1.66 billion social links in 2009. Renren also keeps detailed visitor logs for each user profile, and counters for each photo and diary/blog entry. We capture detailed histories of profile visits over a period of 90 days for more than 61,000 users in the Peking University Renren network, and use statistics of profile visits to study issues of user profile popularity, reciprocity of profile visits, and the impact of content updates on user popularity. We find that latent interactions are much more prevalent and frequent than visible events, non-reciprocal in nature, and that profile popularity are uncorrelated with the frequency of content updates. Finally, we construct latent interaction graphs as models of user browsing behavior, and compare their structural properties against those of both visible interaction graphs and social graphs.
机译:诸如Facebook和Twitter之类的流行在线社交网络(OSN)正在改变用户与Internet交流和互动的方式。对OSN中用户交互的深入了解可以提供有关人类社会行为问题以及社会平台和应用程序设计的重要见解。但是,最近的研究表明,OSN上的大多数用户交互都是潜在交互,是诸如被动浏览等被动行为,而传统浏览技术无法观察到这种行为。在本文中,我们寻求对OSN中可见和潜在用户交互的更深入了解。为了获得有关潜在用户互动的量化数据,我们对人人网进行了详细的度量研究,人人网是中国最大的OSN,迄今已有1.5亿用户。人人网的所有友谊链接都是公开的,使我们能够在2009年全面抓取4200万用户和16.6亿社交链接的连接图部分。人人还为每个用户个人资料保留详细的访客日志,并为每个照片和日记/博客条目保留计数器。 。我们在北京大学人人网捕获了90天之内超过61,000个用户的个人资料访问的详细历史记录,并使用个人资料访问的统计信息来研究用户个人资料受欢迎程度,个人资料访问的互惠性以及内容更新的影响用户受欢迎程度。我们发现,潜在的交互作用比可见事件更为普遍和频繁,本质上是不可逆的,而且个人资料的流行程度与内容更新的频率无关。最后,我们将潜在交互图构造为用户浏览行为的模型,并将其结构属性与可见交互图和社交图进行比较。

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