A Survey on Text Mining - Techniques, Application
DOI:
https://doi.org/10.32628/CSEIT2390391Keywords:
Text Mining, Process of Text Mining, Text mining areasAbstract
Text mining, also known as text data mining or text analytics, is a field of study that focuses on extracting meaningful information and knowledge from textual data. The rapid advancement of digital data acquisition techniques has resulted in an unprecedented volume of data. In fact, over 80 percent of the data generated today comprises unstructured or semi-structured formats. Extracting meaningful patterns and trends from such massive amounts of text data poses a significant challenge. Text mining addresses this challenge by extracting valuable and nontrivial patterns from vast collections of text documents. Various techniques and tools are available for mining text documents and uncovering valuable information to inform decision-making and future processing. Selecting the appropriate text mining technique is crucial as it can significantly enhance the speed and efficiency of retrieving valuable information, reducing the time and effort required. This paper provides a concise analysis and discussion of text mining techniques and their applications. As technology continues to advance, the availability of digital data continues to increase. A substantial portion, approximately 85 percent, of this data exists in unstructured textual form. Consequently, it has become imperative to develop improved techniques and algorithms to effectively extract useful and interesting information from these vast amounts of textual data. This has resulted in the emergence of information extraction and text mining as popular research areas dedicated to uncovering valuable and necessary information from textual data.
References
- Thomas J, McNaught J, Ananiadou S. Applications of text mining within systematic reviews. Res Synth Methods. 2011; 2:1‐14.
- Vishal Gupta, Gurpreet S. Lehal, 2009. ―A Survey of Text Mining Techniques and Applications‖ in Journal of Emerging Technologies in Web Intelligence, Vol. 1 No. 1.
- Shiqun Yin Yuhui Qiu1,ChengwenZhong, 2007. Web Information Extraction and Classification Method .IEEE
- I. H. Witten, K. J. Don, M. Dewsnip, and V. Tablan, ―Text mining in a digital library,‖ International Journal on Digital Libraries, vol. 4, no. 1,pp. 56–59, 2004.
- Bastian H, Glasziou P, Chalmers I. Seventy‐five trials and eleven systematic reviews a day: how will we ever keep up? PLoS Med.2010;7: e1000326
- Lefebvre C, Manheimer E, Glanville J. Chapter 6: Searching for studies. In: Higgins J, Green S, eds. Cochrane Handbook for Systematic Reviews of Interventions Version 5.1.0 (Updated March 2011). The Cochrane Collaboration; 2011.
- Navathe, Shamkant B. and ElmasriRamez. ―Data Warehousing and Data Mining‖, in ―Fundamentals of Database Systems‖, Pearson Education pvtInc, (Singapore, 841-872, 2000).
- Widman LE, Tong DA Arch (Intern Med. 1997), Requests for medical advice from patients and families to health care providers who publish on the World Wide Web. 209-12.
- W. Fan, L. Wallace, S. Rich, and Z. Zhang, ―Tapping the power of textmining,‖ Communications of the ACM, (vol. 49, no. 9, pp.76–82, 2006).
- S.-H. Liao, P.-H.Chu, and P.-Y. Hsiao, ―Data mining techniques andapplications–a decade review from 2000 to 2011,‖ (Expert Systems withApplications, vol. 39, no. 12, pp. 11 303–11 311, 2012.)
Downloads
Published
Issue
Section
License
Copyright (c) IJSRCSEIT

This work is licensed under a Creative Commons Attribution 4.0 International License.