海燕和黑格比台风期间推文的社会网络分析

Ryan Rey M. Daga
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引用次数: 3

摘要

社交媒体网站已经成为灾难和紧急情况下的互动平台。例如,Twitter被发现是最受欢迎的分享和寻找信息的网站之一。为了揭示关于特定事件或主题的用户交互的更多信息,使用了社会网络分析(Social Network Analysis, SNA)。针对不同情况对推文进行了内容分析和SNA,以便能够理解和描绘用户之间交互的可视化表示。在本研究中,SNA被用来揭示菲律宾社区在两次主要台风袭击菲律宾之间的用户交互。由此衍生的社会网络揭示了相似性和差异性。结果还显示,用户倾向于从可靠的来源(如新闻网站和经过验证的Twitter用户)寻找和分享信息。确定推特用户在在线社区中的互动在信息传播中起着至关重要的作用,并有助于在灾害和紧急情况下作出适当反应。
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Social Network Analysis of Tweets on Typhoon during Haiyan and Hagupit
Social media sites have become a platform for interaction during disaster and emergency situations. Twitter, for instance, is found to be one of the top preferred for sharing and seeking information. To reveal more information about the interaction of users regarding a specific event or topic, Social Network Analysis (SNA) is utilized. Content analysis and SNA have been implemented on the tweets regarding different situations to be able to understand and depict a visual representation of interaction between users. In this study, SNA was employed to reveal the user interaction of the Filipino community between two major typhoons that hit the Philippines. Similarities and differences were revealed by the social networks that were derived. Results also revealed that users tend to seek and share information from reliable sources such as news websites and verified Twitter users. Determining the interaction of Twitter users in an online community plays a vital role in information dissemination and allows appropriate response during disaster and emergency situations.
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