Journal Press India®

Data Mining: Review, Drifts and Issues

Vol 1 , Issue 2 , April - June 2013 | Pages: 20-24 | Research Paper  

https://doi.org/10.51976/ijari.121305

| | |


Author Details ( * ) denotes Corresponding author

1. Lokendra Singh, Department of Computer Applications, Shri Venkateshwara University, Gajraula, Uttar Pradesh, India

This paper gives a good overview of Data and Information or Knowledge has a significant role on human activities. Data mining is the knowledge discovery process by analyzing the large volumes of data from various perspectives and summarizing it into useful information. Due to the importance of extracting knowledge/information from the large data repositories, data mining has become an essential component in various fields of human life. Advancements in Statistics, Machine Learning, Artificial Intelligence, Pattern Recognition and Computation capabilities have evolved the present day’s data mining applications and these applications have enriched the various fields of human life including business, education, medical, scientific etc. Hence, this paper discusses the various improvements in the field of data mining from past to the present and explores the future trends

Keywords

Knowledge Discovery in Databases; Data Mining; Historical Trends; Heterogeneous Data; Current Trends; Future Trends

  1. Shonali Krishna swamy 2005 Towards Situation awareness And Ubiquitous Data Mining for Road Safety: Rationale and Architecture for a Compelling Application (2005), Proceedings of conference on Intelligent Vehicles and Road Infrastructure 2005, ages-16, 17. Available at: http://www.csse. monash.edu.au/mgaber/CameraReady
  2. J. R. Quinlan.1992.Programs for Machine Learning, Morgan Kaufmann
  3. Ali Meligy.2009. A Grid-Based Distributed SVM Data Mining Algorithm, European Journal of Scientific Research ISSN 1450-216X Vol.27 (3) Pp.313-321 © Euro Journals Publishing, Inc Available at: http://www.eurojournals.com/ejsr.htm
  4. Han, J., &Kamber, M. 2001. Data mining: Concepts and techniques .Morgan-Kaufman Series of Data Management Systems. San Diego: Academic Press.
  5. Cipolla, Emil T. Data Mining: Techniques to Gain Insight Into Your Data Enterprise Systems Journal (1995):18-24, 64.
  6. Krivda, Cheryl D.Laps around Business IntelligenceMIDRANGE Systems (1995):32-34.
  7. Bouckaert, Remco R.; Frank, Eibe; Hall, Mark A.; Holmes, Geoffrey; Pfahringer, Bernhard; Reutemann, Peter; Witten, Ian H. (2010). "WEKA Experiences with a Java open-source project". Journal of Machine Learning Research 11: 2533–2541. "the original title, "Practical machine learning", was changed ... The term "data mining" was [added] primarily for marketing reasons."
  8. O'Brien, J. A., & Marakas, G. M. (2011). Management Information Systems New York, NY: McGraw-Hill/Irwin.
  9. Alexander, D. (n.d.). Data Mining Retrieved from the University of Texas at Austin: College of Liberal Arts: http://www.laits.utexas.edu/ anorman/BUS.FOR/course.mat/Alex/
  10. Goss, S. (2013) Data-mining and our personal privacy Retrieved from The Telegraph: http://www.macon.com/2013/04/10/2429775/data-mining-and-our-personal-privacy.html
  11. Cannataro, Mario; Talia, Domenico (2003). "The Knowledge Grid: Architecture for Distributed Knowledge Discovery". Communications of the ACM 46(1): 89–93. Doi: 10.1145 /602421. 602425 Retrieved 2011
  12. Talia, Domenico; Trunfio, Paolo (2010). "How distributed data mining tasks can thrive as knowledge services". Communications of the ACM 53 (7): 132–137.doi:10.1145/1785414. 1785451. Retrieved 2011
  13. Seltzer, William. The Promise and Pitfalls of Data Mining: Ethical Issues.
  14. Pitts, Chip (2007). "The End of Illegal Domestic Spying Don't Count on It". Washington Spectator
  15. Taipale, Kim A. (2003). "Data Mining and Domestic Security: Connecting the Dots to Make Sense of Data". Columbia Science and Technology Law Review 5 (2). OCLC 45263753 SSRN 546782
  16. Resig, John; and Teredesai, Ankur (2004). "A Framework for Mining Instant Messaging Services" Proceedings of the 2004 SIAM DM Conference
  17. a b c Think Before You Dig: Privacy Implications of Data Mining & Aggregation, NASCIO Research Brief, 2004
  18. Biotech Business Week Editors (2008); BIOMEDICINE; HIPAA Privacy Rule Impedes Biomedical Research, Biotech Business Week, retrieved 2009 from LexisNexis Academic
  19. Norén, G. Niklas; Bate, Andrew; Hopstadius, Johan; Star, Kristina; and Edwards, I. Ralph (2008); Temporal Pattern Discovery for Trends and Transient Effects: It’s Application to Patient Records. Proceedings of the Fourteenth International Conference on Knowledge Discovery and Data Mining (SIGKDD 2008), Las Vegas, NV, pp. 963–971.
  20. Kotsiantis, S., Kanellopoulos, D., Pintelas, P. 2004.Multimedia mining. WSEAS Transactions on Systems (3), s. 3263-3268.
Abstract Views: 1
PDF Views: 678

Advanced Search

News/Events

Indira School of Bus...

Indira School of Mangement Studies PGDM, Pune Organizing Internatio...

Indira Institute of ...

Indira Institute of Management, Pune Organizing International Confe...

D. Y. Patil Internat...

D. Y. Patil International University, Akurdi-Pune Organizing Nation...

ISBM College of Engi...

ISBM College of Engineering, Pune Organizing International Conferen...

Periyar Maniammai In...

Department of Commerce Periyar Maniammai Institute of Science &...

Institute of Managem...

Vivekanand Education Society's Institute of Management Studies ...

Institute of Managem...

Deccan Education Society Institute of Management Development and Re...

S.B. Patil Institute...

Pimpri Chinchwad Education Trust's S.B. Patil Institute of Mana...

D. Y. Patil IMCAM, A...

D. Y. Patil Institute of Master of Computer Applications & Managem...

Vignana Jyothi Insti...

Vignana Jyothi Institute of Management International Conference on ...

By continuing to use this website, you consent to the use of cookies in accordance with our Cookie Policy.