基于频率和图论的文本摘要性能分析

Pradip Chandra Karmaker, M. Hossen
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引用次数: 3

摘要

现在人们正忙于他们的办公室和家庭活动。他们没有足够的时间完全研究报纸。但他们需要更新自己,以适应当前世界发生的事件。因此,文本摘要可以帮助他们快速了解世界各地发生的事件,节省我们宝贵的时间。自动摘要是一种通过计算机编码从一大段文章中提取要点的方法。在本文中,我们使用了词频和图论总结技术,其中前者使用词频,而后者将每个句子假设为一个节点,并将句子之间的相似性分配给相应的边。在这里,我们使用python作为编程语言进行编码。分析结果表明,图论方法比频率汇总法得到的结果更准确,但耗时更长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Frequency and Graph Theoretic Based Text Summarization
Nowadays people are becoming busy with their office and family activities. They do not get enough time to study the newspaper completely. But they need to update themselves to the events of the current world. Hence, text summarization can help them to know the events happening all over the world very quickly and saves our valuable time. Automatic summarization is a way of bringing that gist from a large paragraph by coding in the computer. In the paper, we have used term frequency and graph theory summarizing techniques where the first uses word frequency while in the second, each sentence is assumed as a node and the resemblance between sentences is assigned to their corresponding edges. Here, we have used python as the programming language for coding. The analysis shows that the graph-theoretic approach provides more accurate result than frequency summarizer although it takes more time.
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