Graph Based Extractive News Articles Summarization Approach leveraging Static Word Embeddings

Utpal Barman, Vishal Barman, Mustafizur Rahman, Nawaz Khan Choudhury
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引用次数: 3

Abstract

With enormous and voluminous data being generated on a regular basis at an exponential speed, there is a demanding need for concise and relevant information to be available for the masses. Traditionally, lengthy textual contents are manually summarized by Linguists or Domain Experts, which are highly time consuming and unfairly biased. There is a dire need for Automatic Text Summarization approaches to be introduced in this broad spectrum. Extractive Summarization is one such approach where the salient information or excerpts are identified from a source and extracted to generate a concise summary. TextRank is an unsupervised extractive summarization technique incorporating graph-based ranking of extracted texts and finding the most relevant excerpts to generate a concise summary. In this paper, the prospects of a domain agnostic algorithm like TextRank for various domains of News Article Summarization are explored, exploring its efficiency in domain specific tasks and conveniently drawing various insights. NLP based pre-processing approaches and Static Word Embeddings were leveraged with semantic cosine similarity for the efficient ranking of textual data and performance evaluation on various domains of BBC News Articles Summarization datasets through ROUGE metrics. A commendable ROUGE score is achieved.
利用静态词嵌入的基于图的新闻文章摘要提取方法
由于大量的数据正以指数级的速度定期产生,因此迫切需要为大众提供简明和相关的信息。传统上,冗长的文本内容是由语言学家或领域专家手动总结的,这既耗时又不公平。在这个广泛的范围内,迫切需要引入自动文本摘要方法。摘要摘要就是这样一种方法,从一个来源中识别出重要的信息或摘录,并从中提取出一个简明的摘要。TextRank是一种无监督的摘录摘要技术,结合了基于图的摘录文本排序,并找到最相关的摘录以生成简洁的摘要。本文探讨了面向新闻文章摘要各个领域的TextRank等领域不可知算法的发展前景,探索了其在特定领域任务中的效率,并方便地得出各种见解。利用基于自然语言处理的预处理方法和静态词嵌入的语义余弦相似度,通过ROUGE指标对BBC新闻文章摘要数据集的各个领域进行有效的文本数据排序和性能评估。达到了值得称赞的ROUGE分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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