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Multi-Documents Summarization Based on TextRank and its Application in Online Argumentation Platform

机译:基于Textrank的多文件摘要及其在在线论证平台中的应用

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摘要

In an Online Argumentation Platform, a great deal of speech messages are produced. To find similar speech texts and extract their common summary is of great significance for improving the efficiency of argumentation and promoting consensus building. In this article, a method of speech text analysis is proposed. Firstly, a heuristic clustering algorithm is used to cluster the speech texts and obtain similar text sets. Then, an improved TextRank algorithm is used to extract a multi-document summary, and the results of the summary are fed back to experts (i.e. participants). The method of multi-document summarization is based on TextRank, which takes into account the position of sentences in paragraphs, the weight of the key sentence, and the length of the sentence. Finally, a prototype system is developed to verify the validity of the method using the four evaluation parameters of recall rate, accuracy rate, F-measure, and user feedback. The experimental results show that the method has a good performance in the system.
机译:在一个在线论证平台中,产生了大量的语音消息。寻找类似的讲话文本和提取他们的共同摘要对于提高论证和促进共识建设的效率具有重要意义。在本文中,提出了一种语音文本分析方法。首先,启发式聚类算法用于群集语音文本并获得类似的文本集。然后,改进的Textrank算法用于提取多文件摘要,并将摘要结果送回专家(即参与者)。多文件摘要方法基于Textrank,这考虑了段落中句子的位置,密钥句的重量和句子的长度。最后,开发了一种原型系统以验证使用召回速率,精度,F度量和用户反馈的四个评估参数的方法的有效性。实验结果表明,该方法在系统中具有良好的性能。

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