Novel Data Mining Methodology SDM (Spread Data Mining) for Collaborative Multi Agents in Peer to Peer Networks

Authors(3) :-J.S.Anita Lily, G.Priyanka, M.Deepa Lakshmi

In this modern era of information technology independent agents, multi-agent and knowledge discovery are the most active areas. Continuous research has uncovered various natural difficulties and issues confronting every zone, which can't be tended to be exclusively inside the limits of the particular train. A significant knowledge of bringing these two groups together has disclosed a gigantic potential for new open doors and more extensive applications through the collaboration of operators and information mining. With expanding enthusiasm for this cooperative energy, operator mining is rising as another examination field contemplating the connection and incorporation of operators and information mining. In this paper, we give a general point of view of the main thrusts, hypothetical underpinnings, principle investigate issues, and application areas of this field, while tending to the cutting edge of operator mining innovative work. Our survey is separated into three key research points: specialist driven information mining,Information mining-driven operators, and joint issues in the cooperative energy of specialists. This new and promising field displays an incredible potential for historic work from foundational, mechanical and down to earth points of view.

Authors and Affiliations

J.S.Anita Lily
Assistant Professor, Department of Computer Application, Hindusthan College of Arts & Science, Coimbatore, Tamil Nadu, India
G.Priyanka
Assistant Professor, Department of Information Technology and Computer Technology, Hindusthan College of Arts &Science, Coimbatore, Tamil Nadu, India
M.Deepa Lakshmi
Assistant Professor, Department of Computer Application, Hindusthan College of Arts & Science, Coimbatore, Tamil Nadu, India

Information Mining, Corporate Mining, Cooperative Energy

  1. Ajith Abraham, Crina Gros an, and Vitorino Ramos, editors.Swarm Intelligence in Data Mining, volume 34 of Studies in Computational Intelligence. Springer, 2006.
  2. Sung W. Baik, Jerzy W. Bala, and Ju S. Cho Agent based distributed data mining. Lecture Notes in Computer Science,3320:42-45, 2004.
  3. S.Bailey, R. Grossman, H. Siva Kumar, and A. Turin sky Papyrus: a system for data mining over local and wide are IJCSI International Journal of Computer Science Issues, Vol. 9, Issue 2, No 3, March 2012 ISSN (Online): 1694-081www.IJCSI.org 8Copyright (c) 2012 International Journal of Computer Science Issues. All Rights Reserved clusters and super-clusters. In Supercomputing ’99 Proceedings of the 1999 ACM/IEEE conference o Supercomputing (CDROM), page 63, New York, NY, USA 1999. ACM.
  4. R.J. Bayardo, W. Bohrer, R. Brice, A. Cichocki, J. Fowler A. Helal, V. Kashyap, T. Ksiezyk, G. Martin, M. Nodineand Others. Info Sleuth: agent-based semantic integration of Information in open and dynamic environments. AC SIGMOD Record, 26(2):195-206, 1997.
  5. F.Bergen, M. P. Gleizes, and F. Zambonelli Methodologies and Software Engineering for Agent Systems: The Agent oriented Software Engineering Handbook. Kluwer Academic Publishers, 2004.
  6. A.Bordet sky. Agent-based Support for Collaborative Data Mining in Systems Management. In Proceedings of the Annual Hawaii International Conference On System Sciences, page 68, 2001.
  7. R.Bose and V. Sugumaran. IDM: an intelligent software agent based data mining environment. 1998 IEE International Conference on Systems, Man, and Cybernetics,3, 1998.
  8. L.Cao, C. Luo, and C. Zhang. Agent-Mining Interaction: A Emerging Area. Lecture Notes in Computer Science 4476:60, 2007.
  9. L.Cao, J. Ni, J. Wang, and C. Zhang. Agent Services Driven Plug and Play in the FTRADE. In 17th Australia Joint Conference on Artificial Intelligence, volume 3339, Pages 917-922. Springer, 2004.
  10. J.Dasilva, C. Giannella, R. Bhargava, H. Kargupta, and M Klusch. Distributed data mining and agents. Engineering Applications of Artificial Intelligence, 18(7):791-807, October 2005.
  11. S.Datta, K. Bhaduri, C. Giannella, R. Wolff, and H Kargupta. Distributed data mining in peer-to-peer networks Internet Computing, IEEE, 10(4):18-26, 2006.
  12. W.Davies and P. Edwards. Distributed Learning: An Agent Based Approach to Data-Mining. In Proceedings of Machine Learning 95 Workshop on Agents that Learn from Other Agents, 1995.
  13. U.Fayyad, R. Uthurusamy, and Others. Data mining and knowledge discovery in databases. Communications of the ACM, 39(11):24-26, 1996.
  14. C.Giannella, R. Bhargava, and H. Kargupta. Multi-agent Systems and Distributed Data Mining. Lecture Notes in Computer Science, pages 1-15, 2004.
  15. V.Gorodetskiy. Interaction of agents and data mining in ubiquitous environment. In Proceedings of the 2008 IEEE/WIC/ACM International Joint Conference on Web Intelligence and Intelligent Agent Technology (WI-IAT’08), 2008.
  16. V.Gorodetsky, O. Karsaev, and V. Samoilov. Multi-Agent Data and Information Fusion. NATO Science Series Sub Series Iii Computer And Systems Sciences, 198:308, 2005.
  17. V.Gorodetsky, O. Karsaev, and V. Samoilov. Infrastructural Issues for Agent-Based Distributed Learning. In Proceedings of the 2006 IEEE/WIC/ACM international conference on Web Intelligence and Intelligent Agent Technology, pages 3-6. IEEE Computer Society Washington, DC, USA, 2006.

Publication Details

Published in : Volume 3 | Issue 3 | March-April 2018
Date of Publication : 2018-02-28
License:  This work is licensed under a Creative Commons Attribution 4.0 International License.
Page(s) : 215-222
Manuscript Number : CSEIT1831406
Publisher : Technoscience Academy

ISSN : 2456-3307

Cite This Article :

J.S.Anita Lily, G.Priyanka, M.Deepa Lakshmi, "Novel Data Mining Methodology SDM (Spread Data Mining) for Collaborative Multi Agents in Peer to Peer Networks", International Journal of Scientific Research in Computer Science, Engineering and Information Technology (IJSRCSEIT), ISSN : 2456-3307, Volume 3, Issue 3, pp.215-222, March-April-2018.
Journal URL : http://ijsrcseit.com/CSEIT1831406

Article Preview

Follow Us

Contact Us