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Towards development of FOPL based tweet summarization technique in a post disaster scenario: From survey to solution

机译:在灾后场景中发展F1基推文摘要技术:从调查到解决方案

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In post disaster situation, the existing network infrastructure might be partly or fully damaged. In that case, a very popular online social network like twitter can be an effective tool, where people can share their views and knowledge about what is actually happening in the affected areas. It is a very challenging task to analyze the situation during the golden hours of any large scale disaster due to the absence of any renowned news media. All the tweets posted related to disaster are not genuine. Hence, some filtration must be performed to discard rumor tweets. After eliminating rumors, it has been observed that the volume of genuine tweets obtained is also very large. Thus, it is non-trivial for relief or rescue teams to analyze that large number of tweets and to take any decision regarding the relief and rescue as manual processing of those large numbers of tweets take significant amount of time. It is necessary to devise a summarization technique for efficient processing and analysis of genuine information at any point of time. In this work, an FOPL based summarization technique has been adopted to summarize the genuine tweets. From results it has been analyzed that the proposed technique has achieved better ROUGH-1 variant score compared to some other existing popular baseline techniques. The generated summary achieves an average precision, recall and F-measure score of 0.79, 0.39 and 0.55 respectively.
机译:在灾后情况下,现有的网络基础架构可能部分或完全损坏。在这种情况下,像Twitter这样的非常受欢迎的在线社交网络可以是一个有效的工具,人们可以分享他们的观点和了解受影响地区实际发生的内容。由于缺乏任何知名的新闻媒体,在任何大规模灾难中的黄金时段内的情况下,这是一个非常具有挑战性的任务。所有与灾难相关的推文都不是真的。因此,必须执行一些过滤以丢弃谣言推文。消除了谣言后,已经观察到所获得的真正推文的体积也非常大。因此,救济或救援团队是不普遍的,以分析大量推文,并对救济和救援采取任何决定,因为手工加工大量推文需要大量的时间。有必要在任何时候设计,以便有效地处理和分析真实信息。在这项工作中,已经采用了一个基于FOLTIC的摘要技术来总结了真正的推文。结果从结果分析,与其他一些现有的流行基线技术相比,所提出的技术已经实现了更好的粗糙度变体分数。所生成的摘要分别实现了平均精度,召回和F测量分别为0.79,0.39和0.55。

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