内容共享社交网络中的社区检测

Nagarajan Natarajan, P. Sen, V. Chaoji
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引用次数: 37

摘要

像Twitter这样的微博网站的网络结构和内容是相互影响的,Twitter上的用户A会关注用户B在网络上发布的推文,然后A可能会将B分享的内容转发给自己的关注者。在本文中,我们提出了一个概率模型,通过利用社交图和用户共享的内容来联合建模链接社区和内容主题。我们将社区建模为用户分布,将其用作感兴趣主题的来源,并使用Gibbs抽样共同推断社区和主题。虽然使用社交图对社区进行建模,或者使用内容对主题进行建模受到了大量关注,但最近有一些方法试图同时使用内容和社交图对内容共享平台中的主题进行建模。我们的工作与现有的生成模型的不同之处在于,我们明确地将用户的社交图谱与用户生成的内容一起建模,模仿这两个实体如何在内容共享平台中共同进化。最近的研究发现,Twitter更像是一个内容分享网络,而不是一个社交网络,似乎很难从关注者与关注者的链接中发现紧密联系的社区。然而,我们是否可以同时使用链接和内容来提取Twitter社区的问题是开放的。本文对这个问题作了肯定的回答。我们的模型发现了一致的社区和主题,正如Twitter用户子图上的定性结果所证明的那样。此外,我们对预测追随者-追随者链接的任务评估了我们的模型。我们表明,与仅基于结构或仅基于内容和路径的生成模型(如Katz)相比,链接和内容的联合建模显著提高了Twitter子图(由大约70万用户和超过2700万条tweet组成)上的链接预测性能。
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Community detection in content-sharing social networks
Network structure and content in microblogging sites like Twitter influence each other - user A on Twitter follows user B for the tweets that B posts on the network, and A may then re-tweet the content shared by B to his/her own followers. In this paper, we propose a probabilistic model to jointly model link communities and content topics by leveraging both the social graph and the content shared by users. We model a community as a distribution over users, use it as a source for topics of interest, and jointly infer both communities and topics using Gibbs sampling. While modeling communities using the social graph, or modeling topics using content have received a great deal of attention, a few recent approaches try to model topics in content-sharing platforms using both content and social graph. Our work differs from the existing generative models in that we explicitly model the social graph of users along with the user-generated content, mimicking how the two entities co-evolve in content-sharing platforms. Recent studies have found Twitter to be more of a content-sharing network and less a social network, and it seems hard to detect tightly knit communities from the follower-followee links. Still, the question of whether we can extract Twitter communities using both links and content is open. In this paper, we answer this question in the affirmative. Our model discovers coherent communities and topics, as evinced by qualitative results on sub-graphs of Twitter users. Furthermore, we evaluate our model on the task of predicting follower-followee links. We show that joint modeling of links and content significantly improves link prediction performance on a sub-graph of Twitter (consisting of about 0.7 million users and over 27 million tweets), compared to generative models based on only structure or only content and paths-based methods such as Katz.
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