Litcius/Paper detail

Extractive Text Summarization Using Recent Approaches: A Survey

Avaneesh Kumar Yadav, Ashish Kumar Maurya, Ranvijay, Rama Shankar Yadav

2021Ingénierie des systèmes d information21 citationsDOI

Abstract

In this era of growing digital media, the volume of text data increases day by day from various sources and may contain entire documents, books, articles, etc. This amount of text is a source of information that may be insignificant, redundant, and sometimes may not carry any meaningful representation. Therefore, we require some techniques and tools that can automatically summarize the enormous amounts of text data and help us to decide whether they are useful or not. Text summarization is a process that generates a brief version of the document in the form of a meaningful summary. It can be classified into abstractive text summarization and extractive text summarization. Abstractive text summarization generates an abstract type of summary from the given document. In extractive text summarization, a summary is created from the given document that contains crucial sentences of the document. Many authors proposed various techniques for both types of text summarization. This paper presents a survey of extractive text summarization on graphical-based techniques. Specifically, it focuses on unsupervised and supervised techniques. This paper shows the recent works and advances on them and focuses on the strength and weaknesses of surveys of previous works in tabular form. At last, it concentrates on the evaluation measure techniques of summary.

Topics & Concepts

Automatic summarizationComputer scienceInformation retrievalText graphMulti-document summarizationProcess (computing)Representation (politics)Natural language processingArtificial intelligenceData sciencePolitical scienceLawOperating systemPoliticsAdvanced Text Analysis TechniquesTopic ModelingNatural Language Processing Techniques
Extractive Text Summarization Using Recent Approaches: A Survey | Litcius