Date of Publication :4th January 2019
Abstract: Data mining is a process of extracting knowledge by analyzing various past ancient data bases and predict the end result or take appropriate decision based on prediction. This data mining process has many challenging issues while performing research, analyzing raw data of the past records and predicting may also lead to negative decision result few times. Direct application of methods and techniques developed under related studies in machine learning, statistics and database systems cannot solve these problem. It is required to perform dedicated and appropriate analytical studies to invent new data mining methods or to develop integrated unique techniques for efficient and effective data mining, whereas data mining itself has formed an independent unique and innovative field of study. Data mining is a widely used platform to perform various decisions making in many Industry like banking, finance, agriculture, communication, telecom, Military Service, Police department, other government departments, engineering, Medication &hospitals, law & order etc. This paper deals with detailed study of Data Mining, its techniques, tasks and related tools.
Reference :
-
- Kumbhare, Trupti A., and Santosh V. Chobe. "An overview of association rule mining algorithms." International Journal of Computer Science and Information Technologies 5.1 (2014): 927-930.
- Ramageri, Bharati M., and B. L. Desai. "Role of data mining in retail sector." International Journal on Computer Science and Engineering 5.1 (2013): 47.
- Ilayaraja, M., and T. Meyyappan. "Mining medical data to identify frequent diseases using Apriori algorithm." Pattern Recognition, Informatics and Mobile Engineering (PRIME), 2013 International Conference on. IEEE, 2013.
- Voznika, Fabricio, and Leonardo Viana. "Data Mining Classification." (2007).
- Tamilselvi, R., and S. Kalaiselvi. "An Overview of Data Mining Techniques and Applications." Int J Sci Eng. Res 1.1-3 (2013): 506-9.
- Karur Parminder and Qamar Parvez Rana. “Comparison of various data mining tools”, International Journal of Engineering Research & Technology (IJERT)ISSN: 2278-0181IJERTV3IS100246 Vol. 3 Issue 10, October- 2014
- Rawat, Keshav Singh, and I. V. Malhan. “Comparative Analysis of Data Mining Techniques, Tools and Machine Learning Algorithms for Efficient Data Analytics." IOSR Journal of Computer Engineering ISSN: 2278-0661,p-ISSN: 2278-8727, Volume 19, Issue 4,
- Doddi, Achla Marathe, SS Ravi, David C. Torney, Srinivas. "Discovery of association rules in medical data." Medical informatics and the Internet in medicine 26.1 (2001): 25-33.
- Gera, Mansi, and Shivani Goel. "Data miningtechniques, methods and algorithms: A review on tools and their validity." International Journal of Computer Applications 113.18 (2015).
- Verma, Manish, et al. "A comparative study of various clustering algorithms in data mining." International Journal of Engineering Research and Applications (IJERA) 2.3 (2012): 1379-1384.