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Detection of Topical Influence in Social Networks via Granger-Causal Inference: A Twitter Case Study

机译:通过格兰杰因果推理检测社交网络中的主题影响力:Twitter案例研究

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With the ever-increasing importance of computer-mediated communication in our everyday life, understanding the effects of social influence in online social networks has become a necessity. In this work, we argue that cascade models of information diffusion do not adequately capture attitude change, which we consider to be an essential element of social influence. To address this concern, we propose a topical model of social influence and attempt to establish a connection between influence and Granger-causal effects on a theoretical and empirical level. While our analysis of a social media dataset finds effects that are consistent with our model of social influence, evidence suggests that these effects can be attributed largely to external confounders. The dominance of external influencers, including mass media, over peer influence raises new questions about the correspondence between objectively measurable information diffusion and social influence as perceived by human observers.
机译:随着计算机介导的通信在我们日常生活中的重要性日益提高,了解在线社交网络中社会影响的影响已成为一种必要。在这项工作中,我们认为信息传播的级联模型不能充分捕获态度变化,而我们认为这是社会影响力的基本要素。为了解决这一问题,我们提出了一种社会影响力的主题模型,并试图在理论和经验水平上建立影响力与格兰杰因果关系之间的联系。尽管我们对社交媒体数据集的分析发现与我们的社会影响模型相符的影响,但证据表明,这些影响很大程度上可以归因于外部混杂因素。包括大众媒体在内的外部影响者在同伴影响力方面的优势提出了新的问题,即人类观察者认为客观可测量的信息传播与社会影响之间的对应关系。

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