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Determining Influential Users in Internet Social Networks

机译:确定互联网社交网络中的有影响力的用户

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摘要

The success of Internet social networking sites depends on the number and activity levels of their user members. Although users typically have numerous connections to other site members (i.e., "friends"), only a fraction of those so-called friends may actually influence a member's site usage. Because the influence of potentially hundreds of friends needs to be evaluated for each user, inferring precisely who is influential-and, therefore, of managerial interest for advertising targeting and retention efforts-is difficult. The authors develop an approach to determine which users have significant effects on the activities of others using the longitudinal records of members' log-in activity. They propose a nonstandard form of Bayesian shrinkage implemented in a Poisson regression. Instead of shrinking across panelists, strength is pooled across variables within the model for each user. The approach identifies the specific users who most influence others' activity and does so considerably better than simpler alternatives. For the social networking site data, the authors find that, on average, approximately one-fifth of a user's friends actually influence his or her activity level on the site.
机译:Internet社交网站的成功取决于其用户成员的数量和活动级别。尽管用户通常与其他站点成员(即“朋友”)有许多联系,但实际上只有一小部分所谓的朋友可能会影响成员的站点使用情况。由于需要为每个用户评估潜在的数百个朋友的影响力,因此很难准确地推断出谁具有影响力,因此很难确定广告定位和保留努力的管理兴趣。作者开发了一种方法,可以使用成员登录活动的纵向记录来确定哪些用户对其他人的活动有重大影响。他们提出了在泊松回归中实现的贝叶斯收缩的非标准形式。而不是在小组成员之间缩小精力,而是将实力集中在模型中每个用户的变量之间。该方法可以识别对他人活动影响最大的特定用户,并且比简单的替代方法要好得多。对于社交网站数据,作者发现,平均而言,大约有五分之一的用户朋友实际上会影响他或她在网站上的活动水平。

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