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Text Summarizing Using NLP
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In this era everything is digitalized we can find a large amount of digital data for different purposes on the internet and relatively it’s very hard to summarize this data manually. Automatic Text Summarization (ATS) is the subsequent big one that could simply summarize the source data and give us a short version that could preserve the content and the overall meaning. While the concept of ATS is started long back in 1950’s, this field is still struggling to give the best and efficient summaries. ATS proceeds towards 2 methods, Extractive and Abstractive Summarization. The Extractive and Abstractive methods had a process to improve text summarization technique. Text Summarization is implemented with NLP due to packages and methods in Python. Different approaches are present for summarizing the text and having few algorithms with which we can implement it. Text Rank is what to extractive text summarization and it is an unsupervised learning. Text Rank algorithm also uses undirected graphs, weighted graphs. keyword extraction, sentence extraction. So, in this paper, a model is made to get better result in text summarization with Genism library in NLP. This method improves the overall meaning of the phrase and the person reading it can understand in a better way.
Title: Text Summarizing Using NLP
Description:
In this era everything is digitalized we can find a large amount of digital data for different purposes on the internet and relatively it’s very hard to summarize this data manually.
Automatic Text Summarization (ATS) is the subsequent big one that could simply summarize the source data and give us a short version that could preserve the content and the overall meaning.
While the concept of ATS is started long back in 1950’s, this field is still struggling to give the best and efficient summaries.
ATS proceeds towards 2 methods, Extractive and Abstractive Summarization.
The Extractive and Abstractive methods had a process to improve text summarization technique.
Text Summarization is implemented with NLP due to packages and methods in Python.
Different approaches are present for summarizing the text and having few algorithms with which we can implement it.
Text Rank is what to extractive text summarization and it is an unsupervised learning.
Text Rank algorithm also uses undirected graphs, weighted graphs.
keyword extraction, sentence extraction.
So, in this paper, a model is made to get better result in text summarization with Genism library in NLP.
This method improves the overall meaning of the phrase and the person reading it can understand in a better way.
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