Survey on Automated Text Documents Summarization Tools
Abstract
Text mining has become an important research field as it tries to discover valuable information from unstructured and large
amount of texts. It becomes very difficult to get the relevant Information from the Unstructured and large amount of Single and Multiple Text
Documents. Text Mining is an important task of Text Summarization. Automated Text Summarization is the Process of reducing the Original
size of document without changing the overall meaning of the Text and achieving the relevant Information from the text documents. The goal of
the Automated Text Summarization is to minimize the User’s time for reading and understanding the document without disturbing the User’s
area of Interest. The Information Overload Problem can be easily overcome.
Downloads
References
Engineering,Vol.24,No.1,January 2012
Tscan: A Content Anatomy approach to Temporal Topic
Summarization Chien Chin Chen and Meng Chang Chen
[2] IEEE/ACM Transactions on Audio, Speech, and Language
Processing,Vol.22,No.12,December 2014
SRRank: Leveraging Semantic Roles for Extractive Multi
Document Summarization by Su Yan and Xiaojun Wan.
[3] IEEE Transactions on Knowledge and Data
Engineering,Vol.25,No.8,August 2013
A Context-Based Word Indexing Model for Document
Summarization by
Pawan Goyal, Laxmidhar Behera, Senior Member, IEEE, and
Thomas Martin McGinnity, Senior Member, IEEE
[4] IEEE/ACM Transactions on Audio, Speech, and Language
Processing,Vol.21,No.7,July 2013
Ranking Through Clustering: An Integrated Approach to MultiDocument Summarization by Xiaoyan Cai and Wenjie Li.
[5]IEEE Transactions on Fuzzy Systems 1063-6706 (c) 2013
IEEE.
Using data merging techniques for generating multi-document
summarizations by Daan Van Britsom, Antoon Bronselaer,
Department of Telecommunications and Information Processing,
Ghent University
Sint-Pietersnieuwstraat 41, B-9000 Ghent, Belgium
[6] International Journal of Computer Science & Information
Technology (IJCSIT) Vol 5, No 6, December 2013
Multi-Topic Multi-Document Summarizer by Fatma El-Ghannam1
and Tarek El-Shishtawy2
[7] Association of deep learning algorithm with Fuzzy Logic for
Multi document text summarization by G.P.ADMAPRIYA
Journal of Theoretical and applied IT 10th April 2014 Vol.62 NO.1
[8] Wikipedia
[9] TECHNIA – International Journal of Computing Science and
Communication Technologies, VOL. 2, NO. 1, July 2009. (ISSN
0974-3375)
Sentence Clustering-based Summarization of Multiple Text
Documents by Kamal Sarkar
[10] International Science Conferences, ACM, Jgateplus, ebsco,
ijit libraries.
[11] A Hybrid Approach for Extractive Document Summarization
Using Machine Learning and
Clustering Technique
(IJCSIT) International Journal of Computer Science and
Information Technologies, Vol. 5 (2), 2014
[12]A Survey on Automated Text Summarization and Mining
Methodologies.
International Journal of Scientific Research Engineering
&Technology (IJSRET) Volume 2 Issue 8 pp 512-517 November
2013 www.ijsret.org ISSN 2278 –0882
IJSRET @ 2013K.Divya Computer Science Engineering,
Medicaps Institute of Technology and Management, Indore.
[13]Han J. and M. Kamber, “Data Mining Concepts and
Techniques”, Morgan Kaufmann publishers, 2nd Edition.
[14]ACM Library
[15]Online Text summarization Tools Google Search
Author(s) and co-author(s) jointly and severally represent and warrant that the Article is original with the author(s) and does not infringe any copyright or violate any other right of any third parties, and that the Article has not been published elsewhere. Author(s) agree to the terms that the IJRDO Journal will have the full right to remove the published article on any misconduct found in the published article.