Study of Extractive Text Summarizer Using The Elmo Embedding

Hritvik Gupta, Mayank Patel
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引用次数: 13

Abstract

In recent times, data excessiveness has become a major problem in the field of education, news, blogs, social media, etc. Due to an increase in such a vast amount of text data, it became challenging for a human to extract only the valuable amount of data in a concise form. In other words, summarizing the text, enables human to retrieves the relevant and useful texts, Text summarizing is extracting the data from the document and generating the short or concise text of the document. One of the major approaches that are used widely is Automatic Text summarizer. Automatic text summarizer analyzes the large textual data and summarizes it into the short summaries containing valuable information of the data. Automatic text summarizer further divided into two types 1) Extractive text summarizer, 2) Abstractive Text summarizer. In this article, the extractive text summarizer approach is being looked for. Extractive text summarization is the approach in which model generates the concise summary of the text by picking up the most relevant sentences from the text document. This paper focuses on retrieving the valuable amount of data using the Elmo embedding in Extractive text summarization. Elmo embedding is a contextual embedding that had been used previously by many researchers in abstractive text summarization techniques, but this paper focus on using it in extractive text summarizer.
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基于Elmo嵌入的提取文本摘要器研究
近年来,数据过剩已经成为教育、新闻、博客、社交媒体等领域的一个主要问题。由于如此大量的文本数据的增加,对于人类来说,仅以简明的形式提取有价值的数据量变得具有挑战性。换句话说,对文本进行总结,使人们能够检索到相关和有用的文本。文本总结是从文档中提取数据并生成文档的简短或简洁的文本。其中一个被广泛使用的主要方法是自动文本摘要器。自动文本摘要器对大量文本数据进行分析,并将其归纳为包含数据有价值信息的简短摘要。自动文本摘要器又分为两种类型:1)抽取式文本摘要器,2)抽象化文本摘要器。在本文中,我们正在寻找提取文本摘要器方法。抽取文本摘要是一种模型通过从文本文档中选取最相关的句子来生成文本简明摘要的方法。本文主要研究在抽取文本摘要中使用Elmo嵌入来检索有价值的数据量。Elmo嵌入是一种上下文嵌入,在抽象文本摘要技术中已经被许多研究者使用,但本文主要研究的是将其应用于抽取文本摘要器中。
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