Welcome to International Journal of Research in Social Sciences & HumanitiesE-ISSN : 2249 - 4642 | P-ISSN: 2454 - 4671 IMPACT FACTOR: 8.561 |
Abstract
REVIEW OF KNOWLEDGE DISCOVERY PROCESS (KDDS)
Mr. Ranbir
Volume: 4 Issue: 4 2014
Abstract:
In this paper we will discuss and work with the enormous amount of data stored in files, databases, and other repositories, it is increasingly important, of not necessary, to develop powerful means for analysis and perhaps interpretation of such data and for extraction of interesting knowledge that could help in decision-making. Data Mining, also popularly known as Knowledge Discovery in Data bases (KDD), refers to the nontrivial extraction of implicit, previously unknown and potentially useful information from data in databases. While data mining and knowledge discovery in databases (or KDD) are frequently treated as synonyms, data mining is actually part of the knowledge discovery process.
References
- Berry MJA and Linoff GS. 2000. Mastering Data mining: The art and science of customer relationship management, Canada Wiley.
- New W. 2004. Pentagon failed to study privacy issues in data mining
- Verykios, VS; Bertino, E; Fovino, IN; Provenza, LP; Saygin, and Theodoridis, Y. 2004. State-of –the-art in Privacy Preserving Data Mining. SIGMOD Record. Volume 33, Issue 1:50-57.
- Wang J. 2003. Data Mining Challenges and Opportunities. London, IRM Press.
- Agrawal, R.; and Srikant, R. 2000. Privacy-Preserving Data Mining. In Proceedings of the ACM SIGMOD International Conference of Data, 439-450.
- Lindell, Y.: and Pikas, B. 2000. Privacy Preservation Data Mining. In Advances in Cryptology-CRYPTO 2000.
- Goldreich, O.; Micali, S; and Wigdeerson, A 1987. How to Play any mental Game. In Proceedings of the Nineteenth annual ACM Symposium on the theory of computing, 218- 299.
- Evfimievski, S. 20002. Randomization Techniques for Privacy Preservation Association rule mining. SIGKDD Explorations 4(2); 43-48.
- M.S. Chen, J. Han, and P.S. Yu. Data mining: An overview from a database perspective. IEEE Trans. Knowledge and Data Engineering, 8:866-883, 1996.
- J. Han and M. Kamber. Data Mining: Concepts and Techniques. Morgan Kaufmann, 2000.
- G. Piatetsky-Shapiro, U.M. Fayyad, and P. Smyth. From data mining to knowledge discovery: An overview. In U.M. Fayyad et al. (eds.), Advances in Knowledge Discovery and Data Mining, 1-35. AAAI/MIT press, 1996.
Refer & Earn |