Identifying and characterizing user communities on Twitter during crisis events

Aditi Gupta, A. Joshi, P. Kumaraguru
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引用次数: 48

Abstract

Twitter is a prominent online social media which is used to share information and opinions. Previous research has shown that current real world news topics and events dominate the discussions on Twitter. In this paper, we present a preliminary study to identify and characterize communities from a set of users who post messages on Twitter during crisis events. We present our work in progress by analyzing three major crisis events of 2011 as case studies (Hurricane Irene, Riots in England, and Earthquake in Virginia). Hurricane Irene alone, caused a damage of about 7-10 billion USD and claimed 56 lives. The aim of this paper is to identify the different user communities, and characterize them by the top central users. First, we defined a similarity metric between users based on their links, content posted and meta-data. Second, we applied spectral clustering to obtain communities of users formed during three different crisis events. Third, we evaluated the mechanism to identify top central users using degree centrality; we showed that the top users represent the topics and opinions of all the users in the community with 81% accuracy on an average. The top central people identified represent what the entire community shares. Therefore to understand a community, we need to monitor and analyze only these top users rather than all the users in a community.
在危机事件中识别和描述Twitter上的用户社区
推特是一个著名的在线社交媒体,用于分享信息和观点。此前的研究表明,当前现实世界的新闻话题和事件主导着推特上的讨论。在本文中,我们提出了一项初步研究,从一组在危机事件期间在Twitter上发布消息的用户中识别和表征社区。我们通过分析2011年的三个主要危机事件作为案例研究(艾琳飓风、英国骚乱和弗吉尼亚地震)来展示我们正在进行的工作。仅飓风艾琳就造成了约70 - 100亿美元的损失,并夺去了56人的生命。本文的目的是识别不同的用户群体,并通过顶级中心用户对其进行表征。首先,我们根据用户的链接、发布的内容和元数据定义了用户之间的相似性度量。其次,我们应用谱聚类方法获得了在三种不同危机事件中形成的用户社区。第三,我们利用度中心性评估了识别中心用户的机制;我们发现,最受欢迎的用户代表了社区中所有用户的话题和观点,平均准确率为81%。确定的最高中心人物代表了整个社区的共同之处。因此,要了解一个社区,我们只需要监控和分析这些顶级用户,而不是社区中的所有用户。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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