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A data-driven study of influences in Twitter communities

机译:数据驱动的Twitter社区影响力研究

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This paper presents a quantitative study of Twitter, one of the most popular micro-blogging services, from the perspective of user influence. We crawl several datasets from the most active communities on Twitter and obtain 20.5 million user profiles, along with 420.2 million directed relations and 105 million tweets among the users. User influence scores are obtained from influence measurement services, Klout and PeerIndex. Our analysis reveals interesting findings of the structural properties of Twitter communities. Most importantly, we observe that whether a user retweets a message is strongly influenced by the first of his followees who posted that message. To capture such an effect, we propose the first influencer (FI) information diffusion model and show through extensive evaluation that compared to the widely adopted independent cascade model, the FI model is more stable and more accurate in predicting influence spreads in Twitter communities.
机译:本文从用户影响的角度对Twitter(一种最受欢迎​​的微博客服务)进行了定量研究。我们从Twitter上最活跃的社区中抓取了几个数据集,并获得了2050万用户个人资料,以及4.202亿的直接关系和1.05亿的用户推文。用户影响力分数是从影响力测量服务Klout和PeerIndex获得的。我们的分析揭示了Twitter社区的结构特性的有趣发现。最重要的是,我们观察到用户是否转发消息是受其第一个发布该消息的关注者的强烈影响。为了捕获这种效果,我们提出了第一个影响者(FI)信息传播模型,并通过广泛的评估表明,与广泛采用的独立级联模型相比,FI模型在预测Twitter社区中的影响传播方面更加稳定和准确。

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