Frequency-Driven Approach for Extractive Text Summarization

IF 0.3
Ashwini Zadgaonkar
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引用次数: 0

Abstract

Due to Digital Revolution, most books and newspaper articles are now available online. Particularly for kids and students, prolonged screen time might be bad for eyesight and attention span. As a result, summarizing algorithms are required to provide long web content in an easily digestible style. The proposed methodology is using term frequency and inverse document frequency driven model, in which the document summary is generated based on each word in a corpus. According to the preferred method, each sentence is rated according to its tf-idf score, and the document summary is produced in a fixed ratio to the original text. Expert summaries froma data set are used for measuring precision and recall using the proposed approach’s ROUGE model. towards the development of such a framework is presented.
抽取文本摘要的频率驱动方法
由于数字革命,大多数书籍和报纸文章现在都可以在网上找到。尤其是对孩子和学生来说,长时间看屏幕可能会损害视力和注意力。因此,需要总结算法以易于理解的方式提供长网页内容。提出的方法是使用词频和逆文档频率驱动模型,其中基于语料库中的每个词生成文档摘要。根据首选方法,每个句子根据其tf-idf分数进行评分,并按照与原文的固定比例生成文档摘要。使用该方法的ROUGE模型,使用来自数据集的专家摘要来测量精度和召回率。提出了该框架的发展方向。
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来源期刊
International Journal of Next-Generation Computing
International Journal of Next-Generation Computing COMPUTER SCIENCE, THEORY & METHODS-
自引率
66.70%
发文量
60
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