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AUTO TEXT SUMMARY GENERATOR

MIGAVEL M, Dr A R JayaSudha

Abstract


Text summarization using NLP is a technique that involves the automatic creation of a condensed version of a given text while retaining its most important information. This approach relies on various natural language processing techniques, such as sentence parsing, named entity recognition, and semantic analysis. The objective of text summarization is to reduce the reading time while preserving the overall meaning of the original text. Summarization is the way of abstracting important information from one or more sources. It increases the likelihood of finding the points of texts, so the user will spend less time on reading. The World Wide Web provide a huge information available to users and users are overloaded with lengthy text document .Some people make decisions on the basis of reviews they have seen and with summaries they can make effective decision in less time. With increasing volume of information summarization play a very important role in terms of time saving.


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References


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