APPLICATIONS OF TEXT SUMMARIZATION

Main Article Content

Nabajit Newar
Debabrata Khargharia
Nomi Baruah

Abstract

 As data is accessible in abundance for each point on web, gathering the critical data as rundown would profit various clients. Thus, there is developing enthusiasm among the examination group for growing new ways to deal with consequently summarise the content. Automatic text summarisation framework creates a rundown, i.e. short length message that incorporates all the essential data of the archive. Outline can be created through extractive and additionally abstractive strategies. Abstractive strategies are profoundly unpredictable as they require broad regular dialect preparing. Accordingly, look into group is concentrating more on extractive rundowns, attempting to accomplish more lucid and significant outlines. Amid 10 years, a few extractive methodologies have been created for programmed outline age that actualizes various machine learning and enhancement procedures. This paper introduces some of the different applications where text summarisation are used.

Downloads

Download data is not yet available.

Article Details

Section
Articles

References

. Personalized Multimedia Web Summarizer for Tourist , Xiao Wu et. al. , Key Laboratory of Intelligent Information Processing Institute of Computing Technology, CAS, Beijing, China , April 21-25,2008

. Dim En Nyaung, Thin Lai Lai Thein . Feature-Based Summarizing and Ranking from Customer Reviews . World Academy of Science, Engineering and Technology International Journal of Computer and Information Engineering Vol:9, No:3, 2015

. Improving Legal Document Summarization Using Graphical Models. (PDF Download Available). Available from:https://www.researchgate.net/publication/220809892_Improving_Legal_Document_Summarization_Using_Graphical_Models [accessed Dec 16 2017].

. Selvani Deepthi Kavila, Vijayasanthi Puli, G.S.V. Prasada Raju, and Rajesh Bandaru. An Automatic Legal Document Summarization and Search Using Hybrid System. Department of Computer Science and Engineering, Anil Neerukonda Institute of Technology and Sciences, Sangivalasa, Visakhapatnam, AP, India . 2013

. Ambedkar Kanapala, Sokumal Pal, Rajendra Pamula. Text summarisation from legal documents:a survey. Artificial Intelligence Review. 2017

. Rada Mihalcea and Hakan Ceylan. Explorations in Automatic Book Summarization. Department of Computer Science. University of North Texas. January 2014

. Lawrence Wong. Automatic News Summarization and Extraction System. MEng Computing. Imperial College Dept. of computing. Accessed on 02.01.2018

. GATE, Generic Architecture of Text Engineering - http://gate.ac.uk/

. Anna Kazantseva. Automatic Summarisation of Short Fiction. University of Ottawa. December 2006.

. Summarization from Medical Documents: A Survey. Available from: https://www.researchgate.net/publication/220103096_Summarization_from_Medical_Documents_A_Survey [accessed Dec 16 2017].

. Gayathri, P., N. Jaisankar. Towards an Efficient Approach for Automatic Medical Document Summarization.School of Computing science and engineering . VIT university. 2015

. ROGUE, Recall- Oriented Understudy for Gisting Evaluation. http://www.berouge.com

. Noemie Elhadad.User-Sensitive Text Summarization: Application to the Medical Domain.Columbia University.2006

. https://doi.org/10.1016/j.jbi.2014.06.009 [accessed Dec 16 2017].

. Frederik Schulze and Mariana Neves. Entity-Supported Summarization of Biomedical Abstracts.Osaka, Japan, December 12th 2016.

. Columbia University, Text summarization: News and Beyond, 2014

. Networks & Advances in Computational Technologies (NetACT), 2017

. Lawrence Wong. Automatic News Summarization and Extraction System. MEng Computing. Imperial College Dept. of computing. Accessed on 02.01.2018