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An improved textual storyline generating framework for disaster information management

机译:用于灾难信息管理的改进的文本故事情节生成框架

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Analyzing and understanding disaster-related situation updates from a large number of disaster-related documents plays an important role in disaster management and has attracted a lot of research attention. Recently several methods have been developed to generate textual storylines from disaster-related documents to help people understand the overall trend and evolution of a disaster event as well as how the disaster affects different areas. These methods are able to help people improve their situation awareness by generating informative summarizes to present the global pictures of disaster events. However, these methods suffer from several limitations including text representation, representative document selection, and summary generation that may affect the quality of the summarized results. To address these limitations, in this paper, we propose an improved two-layer storyline generating framework which generates a global storyline of the disaster events in the first layer, and provides condensed information about specific regions affected by the disaster in the second layer. The proposed framework utilizes the word embedding for text similarity measurement, considers both uniqueness and relevance for representative document selection, and uses Maximal Marginal Relevance to generate summaries from each local document set. The experimental results on four typhoons related events demonstrate the efficacy of our proposed framework on capturing the status information and understanding the situation from a large of documents.
机译:从大量与灾害有关的文档中分析和了解与灾害有关的情况更新在灾害管理中起着重要作用,并引起了许多研究关注。最近,已经开发了几种方法来从与灾难相关的文档中生成文本故事情节,以帮助人们了解灾难事件的整体趋势和演变以及灾难如何影响不同地区。这些方法通过生成内容丰富的摘要来呈现灾难事件的全球图景,可以帮助人们提高对状况的认识。但是,这些方法受到一些限制,包括文本表示,代表性文档选择以及摘要生成,这些可能会影响摘要结果的质量。为了解决这些限制,在本文中,我们提出了一种改进的两层故事情节生成框架,该框架生成第一层灾难事件的全局故事情节,并在第二层中提供有关受灾难影响的特定区域的汇总信息。提出的框架利用单词嵌入进行文本相似性度量,同时考虑了代表文档选择的唯一性和相关性,并使用最大边际相关性从每个本地文档集中生成摘要。关于四个台风相关事件的实验结果证明了我们提出的框架在捕获状态信息和从大量文档中了解情况方面的功效。

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