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Topic-aware joint analysis of overlapping communities and roles in social media

机译:主题感知与社交媒体重叠社区和角色的联合分析

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Topic modeling can be used to improve the mutuality and interpenetration of community discovery and role analysis in social media. Also, it is useful to uncover communities and roles that are both social and topic-aware. In the present manuscript, we explore the exploitation of topic modeling to inform the seamless integration of community discovery and role analysis. For this purpose, we develop an innovative generative model of social media, in which the interrelation among communities, roles and topics is explained from a fully Bayesian perspective. Essentially, communities, roles and topics are latent factors that interact in an underlying generative process, to govern link formation and message wording. Posterior inference under the devised model allows for a variety of exploratory, descriptive and predictive tasks. These include the detection and interpretation of overlapping communities, roles and topics as well as the prediction of missing links. We derive the mathematical details of variational inference and design a coordinate-ascent algorithm implementing the latter. An empirical assessment on real-world social media demonstrates a superior accuracy of the proposed model in community discovery and link prediction compared to several established competitors, which substantiates the rationality of both our modeling effort and the underlying intuition.
机译:主题建模可用于改善社区发现的相互性和互换和社交媒体的作用分析。此外,它很有用来揭示社区和主题感知的社区和角色。在目前的稿件中,我们探讨了对主题建模的开发,以告知社区发现和角色分析的无缝集成。为此,我们开发了一个创新的社交媒体模型,其中社区,角色和主题之间的相互关系是从完全贝叶斯的角度解释的。基本上,社区,角色和主题是在底层生成过程中互动的潜在因素,以管理链接形成和消息措辞。 DESTION模型下的后部推断允许各种探索性,描述性和预测任务。这些包括重叠社区,角色和主题的检测和解释以及缺失链接的预测。我们推出了变分推理的数学细节,并设计了实现后者的坐标上升算法。与几个已建立的竞争对手相比,对真实社交媒体的实证评估展示了社区发现和链路预测中提出的拟议模型的准确性,这使我们的建模努力和潜在直觉的合理性证实。

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