使用内隐社交图推荐朋友

Maayan Roth, Assaf Ben-David, David Deutscher, Guy Flysher, I. Horn, Ari Leichtberg, Naty Leiser, Yossi Matias, Ron Merom
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引用次数: 241

摘要

尽管在线交流工具的用户很少将他们的联系人归类为“家人”、“同事”或“慢跑伙伴”等群体,但他们仍然会隐性地将联系人聚集在一起,通过与他们的互动,形成隐性群体。在本文中,我们描述了由用户与联系人和联系人组的互动形成的隐式社交图,它不同于用户明确添加其他个人作为“朋友”的显式社交图。我们引入了一个基于交互的度量来估计用户对他的联系人和组的亲和力。然后,我们描述了一种新颖的朋友建议算法,该算法使用用户的隐式社交图来生成朋友组,给定一小组用户已经标记为朋友的联系人种子集。我们展示了实验结果,证明了内隐群体关系和基于互动的亲和力排名在推荐朋友中的重要性。最后,我们将讨论好友建议算法的两个应用程序,它们已经作为Gmail实验室的功能发布。
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Suggesting friends using the implicit social graph
Although users of online communication tools rarely categorize their contacts into groups such as "family", "co-workers", or "jogging buddies", they nonetheless implicitly cluster contacts, by virtue of their interactions with them, forming implicit groups. In this paper, we describe the implicit social graph which is formed by users' interactions with contacts and groups of contacts, and which is distinct from explicit social graphs in which users explicitly add other individuals as their "friends". We introduce an interaction-based metric for estimating a user's affinity to his contacts and groups. We then describe a novel friend suggestion algorithm that uses a user's implicit social graph to generate a friend group, given a small seed set of contacts which the user has already labeled as friends. We show experimental results that demonstrate the importance of both implicit group relationships and interaction-based affinity ranking in suggesting friends. Finally, we discuss two applications of the Friend Suggest algorithm that have been released as Gmail Labs features.
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Frequent regular itemset mining Suggesting friends using the implicit social graph Collusion-resistant privacy-preserving data mining Mining advisor-advisee relationships from research publication networks Session details: Research track 5: classification models and tools
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