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Who Should I Follow? Recommending People in Directed Social Networks

机译:我应该遵循谁?推荐在定向社交网络中的人

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A variety of social networks feature a directed attention or "follower" network. In this paper, we compare several methods of recommending new people for users to follow. We analyzed structural patterns in a directed social network to evaluate the likelihood that they will predict a future connection, and use these observations to inform an intervention experiment where we offer users of this network new people to connect to. This paper compares a variety of features for recommending users and presents design implications for social networking services. Certain types of structural closures significantly outperform recommendations based on traditional collaborative filtering, behavioral, and similarity features. We find that sharing an audience with someone is a surprisingly compelling reason to follow them, and that similarity is much less persuasive. We also find evidence that organic network growth is very different from how users behave when they are prompted to connect to new people.
机译:各种社交网络具有指向的关注或“追随者”网络。在本文中,我们比较了几种推荐新人的方法来遵循。我们分析了一个定向的社交网络中的结构模式,以评估他们预测未来连接的可能性,并利用这些观察来通知干预实验,我们为我们提供这个网络新人的用户来连接。本文对推荐用户进行了各种功能,并对社交网络服务提出了设计影响。某些类型的结构封闭件基于传统的协作滤波,行为和相似性特征显着优异。我们发现与某人分享观众是一个令人惊讶的令人信服的理由,并认为相似性不那么说服力。我们还发现有机网络增长与用户在提示连接到新人时的行为方面非常不同。

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