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Multi-tweet Summarization of Real-Time Events

机译:实时事件的多推文汇总

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Popular real-time public events often cause upsurge of traffic in Twitter while the event is taking place. These posts range from real-time update of the event's occurrences highlights of important moments thus far, personal comments and so on. A large user group has evolved who seeks these live updates to get a brief summary of the important moments of the event so far. However, major social search engines including Twitter still present the tweets satisfying the Boolean query in reverse chronological order, resulting in thousands of low quality matches agglomerated in a prosaic manner. To get an overview of the happenings of the event, a user is forced to read scores of uninformative tweets causing frustration. In this paper, we propose a method for multi-tweet summarization of an event. It allows the search users to quickly get an overview about the important moments of the event. We have proposed a graph-based retrieval algorithm that identifies tweets with popular discussion points among the set of tweets returned by Twitter search engine in response to a query comprising the event related keywords. To ensure maximum coverage of topical diversity, we perform topical clustering of the tweets before applying the retrieval algorithm. Evaluation performed by summarizing the important moments of a real-world event revealed that the proposed method could summarize the proceeding of different segments of the event with up to 81.6% precision and up to 80% recall.
机译:流行的实时公共活动经常在发生事件时导致Twitter中的交通飙升。这些帖子从事件发生的实时更新范围从迄今为止的重要时刻的突出显示,个人评论等等。大型用户组已经发展出来,迄今为止,我们会寻求这些实时更新以简要摘要事件的重要时刻。然而,包括Twitter的主要社会搜索引擎仍然介绍了以反向时间顺序为满足布尔查询的推文,导致成千上万的低质量匹配以平淡的方式凝聚。为了了解活动的发生概述,用户被迫读取造成挫败感的未表征性推文的分数。在本文中,我们提出了一种事件的多推文汇总的方法。它允许搜索用户快速概述关于事件的重要时刻。我们提出了一种基于图形的检索算法,该算法识别推文中的推文,其中响应于包括事件相关关键字的查询返回的Twitter搜索引擎返回的推文中的流行讨论点。为确保局部多样性的最大覆盖,我们在应用检索算法之前执行推文的局部聚类。通过总结现实世界事件的重要时刻进行的评估表明,该方法可以总结该事件的不同细分,高达81.6%的精度,高达80%的召回。

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