This paper is published in Volume 4, Issue 11, 2019
Area
Neural Networks
Author
Anishka Chaudhari
Co-authors
Akash Dole, Deepali Kadam
Org/Univ
Datta Meghe College of Engineering, Navi Mumbai, Maharashtra, India
Pub. Date
18 November, 2019
Paper ID
V4I11-1136
Publisher
Keywords
Text summarizer, Google translate, Neural machine translation, NLP, Neural Networks, Encoder-Decoder, Bahdanau Attention model, Extractive summarization

Citationsacebook

IEEE
Anishka Chaudhari, Akash Dole, Deepali Kadam. Marathi text summarization using Neural Networks, International Journal of Advance Research, Ideas and Innovations in Technology, www.IJARnD.com.

APA
Anishka Chaudhari, Akash Dole, Deepali Kadam (2019). Marathi text summarization using Neural Networks. International Journal of Advance Research, Ideas and Innovations in Technology, 4(11) www.IJARnD.com.

MLA
Anishka Chaudhari, Akash Dole, Deepali Kadam. "Marathi text summarization using Neural Networks." International Journal of Advance Research, Ideas and Innovations in Technology 4.11 (2019). www.IJARnD.com.

Abstract

The internet is comprised of web pages, news articles, status updates, blogs and much more. It is difficult to navigate through this data as it is unstructured and usually discursive. Condensed versions of this data are generated so we can navigate it more effectively as well as check whether the larger documents contain the information that we are looking for. We propose a system for extractive text summarization method using neural networks for Marathi text. Extractive summaries or extracts are produced by identifying important sentences or words which are directly selected from the document. To perform extractive text summarization we propose to use a Recurrent Neural Network (RNN) – a type of neural network that can perform calculations on sequential data (e.g. sequences of words) – as it has become the standard approach for many Natural Language Processing tasks. The translation of the Marathi text to English will be done using the Google translate API for this proposed system.
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