Javascript must be enabled to continue!
Text Summarization using Ml and Nlp
View through CrossRef
Quantity of data produced per day is around 2.5 quintillion bytes. Right now, no one has the time to pursue each and everything. With the growth of technology and digital media, people are becoming very lazy; they are looking for everything more smartly. If they want to read any article or newspaper, they cannot go through every line that has been given. To overcome this problem, an automatic text summarizer using Machine Learning (ML) and Natural Language Processing (NLP) with the python programming language has been introduced. This automatic text summarizer will generate a concise and meaningful summary of the text from resources like textbooks, articles, messages by using a text ranking algorithm. The input text that is given will be split into sentences; these sentences are again converted into vectors. These vectors are represented as a similarity matrix and based on these similarities; matrices sentence rankings will be given. The higher ranked sentences will be the final summary of the given input text
Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP
Title: Text Summarization using Ml and Nlp
Description:
Quantity of data produced per day is around 2.
5 quintillion bytes.
Right now, no one has the time to pursue each and everything.
With the growth of technology and digital media, people are becoming very lazy; they are looking for everything more smartly.
If they want to read any article or newspaper, they cannot go through every line that has been given.
To overcome this problem, an automatic text summarizer using Machine Learning (ML) and Natural Language Processing (NLP) with the python programming language has been introduced.
This automatic text summarizer will generate a concise and meaningful summary of the text from resources like textbooks, articles, messages by using a text ranking algorithm.
The input text that is given will be split into sentences; these sentences are again converted into vectors.
These vectors are represented as a similarity matrix and based on these similarities; matrices sentence rankings will be given.
The higher ranked sentences will be the final summary of the given input text.
Related Results
Application of NLP and ML Using a Refined Dataset
Application of NLP and ML Using a Refined Dataset
Machine Learning (ML) is a technology that can revolutionize the world. It is a technology based on AI (Artificial Intelligence) and can predict the outcomes using the previous alg...
Illustrations et modèles mentaux dans la compréhension de textes
Illustrations et modèles mentaux dans la compréhension de textes
Summary: Illustrations and mental models in text comprehension.
We know that graphics in texts can be effective for learning, but we do not have much knowledge about how text ...
Genre and Stylistic Features of the Modern Audiobook
Genre and Stylistic Features of the Modern Audiobook
Modern technological conditions make it possible to create, quickly replicate and use audio books conveniently. Audio books are one of the fastest growing segments of the global pu...
On the equivalence of translations of Abai’s poetic text
On the equivalence of translations of Abai’s poetic text
We consider the equivalence of source and translation texts. Currently, various ways to achieve the adequacy of texts are being studied, which proves the relevance of this problem....
Marcus Aurelius's Meditations
Marcus Aurelius's Meditations
Marcus Aurelius (b. 121 ce) was heir to the throne for twenty-three years, beginning in 138 ce, and then Roman emperor from 161 until his death in 180. He was a philosopher as well...
The Manuscripts of Aristophanes, Knights (I)
The Manuscripts of Aristophanes, Knights (I)
The present study of the manuscripts of the Knights arose out of the preparation of a text of the scholia for a forthcoming edition. The completion of a collation of all the manusc...
The History of the Rechabites— an Initial Commentary
The History of the Rechabites— an Initial Commentary
AbstractThis article is the third in a series of studies on The History of the Rechabites. The first, "The Story of Zosimus or The History of the Rechabites?,"1 established the ind...
Computer assisted text analysis
Computer assisted text analysis
This article presents a method for computer-assisted text analysis, which has been employed by the author in a number of studies. The inductive methodology is based on a frequency ...