ARCHIVES
Book Summarization using NLP
Published Online: March-April 2023
Pages: 476-480
Cite this article
↗ 10.59256/ijire.2023040218Abstract
Abstract: It is crucial to offer an enhanced system for swiftly and effectively extracting information in this modern era where the Internet is a wealth of knowledge. It is quite challenging for humans to manually extract the summary from a lengthy written document. On the Internet, there is a wealth of textual content. As a result, finding relevant papers from the many that are available and learning useful information from them is a challenge. An automatic text summary is crucial for resolving the two issues. The technique of extracting the most significant information from a document or group of related texts and condensing it into a concise version while maintaining its overall meaning is known as text summarizing. Text summarization reduces the length of the original text while maintaining the information and overall meaning. Large texts are particularly challenging for humans to manually summarize. There are two types of text summarizing techniques: extractive and abstractive. Selecting significant sentences, paragraphs, etc. from the original content and concatenating them into a shorter version constitutes an extractive summary method. Sentences' linguistic and statistical characteristics are used to determine their importance. Understanding the original material and retelling it in fewer words are the components of an abstractive summary method. It analyzes and interprets the content using linguistic techniques before identifying fresh ideas and expressions to create a new, concise copy that effectively communicates.
Related Articles
2023
A Mobile Application to Promote the Idea of Recycling
2023
Web Based Printing Press Management System (WBPPMS)
2023
Review: CFD Analysis Of triangular, square and Circular Shaped Helical Coil Heat Exchanger by Using Titanium Oxide Nano fluid
2023
Review: Steady and Transient Thermal Analysis of 100 Cc Engine at 3000c, 5000c & 7000c
2023
Overview of Advancement of Inventory Models for Deteriorating Items with Time Based Uniform Price
2023