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Summarizing Emails with Conversational Cohesion and Subjectivity

机译:总结具有会话凝聚力和主观性的电子邮件

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摘要

In this paper, we study the problem of summarizing email conversations. We first build a sentence quotation graph that captures the conversation structure among emails. We adopt three cohesion measures: clue words, semantic similarity and cosine similarity as the weight of the edges. Second, we use two graph-based summarization approaches, Generalized Clue WordSummarizer and Page-Rank, to extract sentences as summaries. Third, we propose a summarization approach based on subjective opinions and integrate it with the graph-based ones. The empirical evaluation shows that the basic clue words have the highest accuracy among the three cohesion measures. Moreover, subjective words can significantly improve"accuracy.
机译:在本文中,我们研究了汇总电子邮件对话的问题。我们首先构建一个句子引用图,以捕获电子邮件之间的对话结构。我们采用三种衔接措施:线索词,语义相似度和余弦相似度作为边缘的权重。其次,我们使用两种基于图的摘要方法,即通用线索WordSummarizer和Page-Rank,来提取句子作为摘要。第三,我们提出了一种基于主观观点的总结方法,并将其与基于图的观点相结合。实证评估表明,三种线索测度中基本线索词的准确度最高。而且,主观单词可以显着提高“准确性”。

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