ThemeCrowds: twitter使用的多分辨率摘要

SMUC '11 Pub Date : 2011-10-28 DOI:10.1145/2065023.2065041
D. Archambault, Derek Greene, P. Cunningham, N. Hurley
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引用次数: 49

摘要

Twitter等社交媒体网站的用户每天都会快速生成大量文本内容。要理解一组人在这个非结构化文本数据中共同说了什么,就需要可视化的摘要。用户通常会讨论各种各样的主题,其中讨论特定主题的作者数量可以随着时间的推移迅速增加或减少,并且集体对主题的看法可以随着情况的发展而变化。在本文中,我们提出了一种技术,可以总结Twitter用户的集合在一段时间内对特定主题的评论。由于事先不知道检查数据的正确分辨率,因此根据用户帖子的相似性在固定的时间间隔内对用户进行分层聚类。可视化技术将此数据结构作为其输入。给定一个主题,它在每个时间间隔内找到用户的正确解决方案,并提供标签来总结集体讨论的内容。该技术在一个大型微博语料库上进行了测试,该语料库由数百万条推文和超过100万用户组成。
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ThemeCrowds: multiresolution summaries of twitter usage
Users of social media sites, such as Twitter, rapidly generate large volumes of text content on a daily basis. Visual summaries are needed to understand what groups of people are saying collectively in this unstructured text data. Users will typically discuss a wide variety of topics, where the number of authors talking about a specific topic can quickly grow or diminish over time, and what the collective is saying about the subject can shift as a situation develops. In this paper, we present a technique that summarises what collections of Twitter users are saying about certain topics over time. As the correct resolution for inspecting the data is unknown in advance, the users are clustered hierarchically over a fixed time interval based on the similarity of their posts. The visualisation technique takes this data structure as its input. Given a topic, it finds the correct resolution of users at each time interval and provides tags to summarise what the collective is discussing. The technique is tested on a large microblogging corpus, consisting of millions of tweets and over a million users.
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