Probabilistic Community and Role Model for Social Networks

Yu Han, Jie Tang
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引用次数: 38

Abstract

Numerous models have been proposed for modeling social networks to explore their structure or to address application problems, such as community detection and behavior prediction. However, the results are still far from satisfactory. One of the biggest challenges is how to capture all the information of a social network in a unified manner, such as links, communities, user attributes, roles and behaviors. In this paper, we propose a unified probabilistic framework, the Community Role Model (CRM), to model a social network. CRM incorporates all the information of nodes and edges that form a social network. We propose methods based on Gibbs sampling and an EM algorithm to estimate the model's parameters and fit our model to real social networks. Real data experiments show that CRM can be used not only to represent a social network, but also to handle various application problems with better performance than a baseline model, without any modification to the model, showing its great advantages.
社会网络的概率社区和角色模型
已经提出了许多模型来为社交网络建模,以探索其结构或解决应用问题,例如社区检测和行为预测。然而,结果还远远不能令人满意。最大的挑战之一是如何以统一的方式捕获社交网络的所有信息,如链接、社区、用户属性、角色和行为。在本文中,我们提出了一个统一的概率框架,社区角色模型(CRM),以模拟一个社会网络。CRM整合了构成社交网络的节点和边缘的所有信息。我们提出了基于Gibbs抽样和EM算法的方法来估计模型的参数,并将我们的模型拟合到真实的社交网络中。实际数据实验表明,CRM不仅可以用来表示一个社交网络,而且可以处理各种应用问题,其性能优于基线模型,无需对模型进行任何修改,显示出其巨大的优势。
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