We apologize for a recent technical issue with our email system, which temporarily affected account activations. Accounts have now been activated. Authors may proceed with paper submissions. PhDFocusTM
CFP last date
20 December 2024
Reseach Article

Article:Object Oriented Intelligent Multi-Agent System Data Cleaning Architecture to clean Preference based Text Data

by Dr. G. Arumugam, T. Joshva Devadas
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 9 - Number 8
Year of Publication: 2010
Authors: Dr. G. Arumugam, T. Joshva Devadas
10.5120/1404-1894

Dr. G. Arumugam, T. Joshva Devadas . Article:Object Oriented Intelligent Multi-Agent System Data Cleaning Architecture to clean Preference based Text Data. International Journal of Computer Applications. 9, 8 ( November 2010), 34-44. DOI=10.5120/1404-1894

@article{ 10.5120/1404-1894,
author = { Dr. G. Arumugam, T. Joshva Devadas },
title = { Article:Object Oriented Intelligent Multi-Agent System Data Cleaning Architecture to clean Preference based Text Data },
journal = { International Journal of Computer Applications },
issue_date = { November 2010 },
volume = { 9 },
number = { 8 },
month = { November },
year = { 2010 },
issn = { 0975-8887 },
pages = { 34-44 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume9/number8/1404-1894/ },
doi = { 10.5120/1404-1894 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-06T19:58:04.793036+05:30
%A Dr. G. Arumugam
%A T. Joshva Devadas
%T Article:Object Oriented Intelligent Multi-Agent System Data Cleaning Architecture to clean Preference based Text Data
%J International Journal of Computer Applications
%@ 0975-8887
%V 9
%N 8
%P 34-44
%D 2010
%I Foundation of Computer Science (FCS), NY, USA
Abstract

Agents are software programs that perform tasks on behalf of others and they are used to clean the text data with their characteristics. Agents are task oriented with the ability to learn by themselves and they react to the situation. Learning characteristics of an agent is done by verifying its previous experience from its knowledgebase. An agent concept is a complementary approach to the Object Oriented paradigm with respect to the design and implementation of the autonomous entities driven by beliefs, goals and plans. Preference based text data cleaning is based on the selection issue. Preferences are given by the user in the form of alphabets, numbers and special characters. Preference based Text data cleaning process transforms the given text data into structured database and extracts the required information using the given keyword. Agents incorporated in the architectural design of a Text data cleaning process combines the features of Multi-Agent System (MAS) Framework, MAS with Learning (MAS-L) Framework. MAS framework reduces the development time and the complexity of implementing the software agents. MAS-L framework incorporates the intelligence and learning properties of agents present in the system. MAS-L Framework makes use of the Decision Tree learning and an evaluation function to decide the next best decision that applies to the machine learning technique. This paper proposes the design for Multi-Agent based Data Cleaning Architecture that incorporates the structural design of agents into object model. The design of an architectural model for an Intelligent Multi-Agent based Data Cleaning inherits the features of the Multi-Agent System (MAS) and uses the MAS-L framework to design the intelligence and learning characteristics.

References
  1. Ayse Yasemin SEYDIM, "Intelligent Agents : A Data Mining Perspective", CiteSeer-IST Scientific Literature Digital Library, 1999.
  2. Alex Bordetsky, "Agent-Based Support for Colloborate Data Mining in System Management", Proceedings of the 34th Hawaii international conference on System Science, 2001,vol ©IEEE, ISBN 0-7695-0981-9/01.
  3. Dae Su Kim, Chang Suk Kim, Kee Wook Rim, "Modeling and Design of Intelligent Agent System", International Journal of Control Automation and Systems, 2003, Vol 1 No 2.
  4. Dong-Chul Park,"Centroid Neural Network for Unsupervised Competitive Learning", IEEE Transactions on Neural Networks, 2000, Vol 11 © IEEE, ISBN S1045-9227(00)02998-2.
  5. Dinah Payne, Cherie Courseault Trumbach, “Identifying synonymous concepts in preparation for technology mining”, Journal of Information Science, 2007, DOI: 10.1177/0165551506076401
  6. Fayad. M, D.Schmidt, "Building Application Frameworks: Object-Oriented Foundations of Design",John Wiley & Sons,1999.
  7. Feldman R , Fresji M, Hirsh H, Aumann Y, Liphstat O, Schlter Y , Rajman M, "Knowledge Management : A Text Mining Approach" ,Proceedings of the 2nd International conference on Practical Aspects of Knowledge Management(PAKM98),1998.
  8. Ferber, J, "Multi-Agent Systems: An Introduction to Distributed Artificial Intelligence", Addison-Wesley Pub Co, 1999.
  9. Garcia, A., Silva, V., Lucena, C., Milidiú, R. "An Aspect-Based Approach for Developing Multi-Agent Object-Oriented Systems", Simpósio Brasileiro de Engenharia de Software Rio de Janeiro, 2001.
  10. Garcia, A., Lucena, C. J., Cowan, D.D., "Engineering Multi-Agent Object-Oriented Software with Aspect-Oriented Programming", Elsevier, 2001.
  11. Garcia, A., Lucena, C. J.,"An Aspect-Based Object-Oriented Model for Multi-Agent Systems", 2nd Advanced Separation of Concerns Workshop at ICSE-2001, 2001.
  12. Garro, A., Palopoli, L.,"An XML Multi-Agent System for e-Learning and Skill Management", Third International Symposium on Multi-Agent Systems-Large Complex Systems and E-Businesses (MALCEB-2002), 2002.
  13. Gerhard Weiss, "Multiagent Systems – A Modern Approach to Distributed Artificial Intelligence", The MIT Press, 1999.
  14. Helena Galhardas, Daniela Florescu, Dennis Shasha, Eric Simon, Christian-Augustin Saita, "Declarative Data Cleaning: Lanaguage, Model and Algorithms", Proceedings of the 27th VLDB conference, 2005.
  15. Ioerger, T. R. He, L. Lord, D. Tsang, P , "Modeling Capabilities and Workload in Intelligent Agents for Simulating Teamwork", Proceedings of the Twenty-Fourth Annual Conference of the Cognitive Science Society (CogSci-02),2002, PP482-487.
  16. Jiawei Han , Micheline Kamber, "Data mining: Concepts and Techiniques" , Morgan Kaufmann Publishers- Elsevier, 2001.
  17. Jie Tang, Hang Li, Yunbo Cao, Zhaohui Tang , "Email Data Cleaning", Proceedings of the KDD’05 , 2005, vol © ACM, ISBN 1-59593-135-X/05/0008.
  18. Kollayut Kaewbuadee, Yaowadee Temtanapat, Ratchata Peachavanish, "Data Cleaning using FD from Data Mining process", Proceedings of conference, 2003.
  19. Margaret H Dunham, Sridhar S “Data Mining – Introductory and Advanced Topics” Pearson Education, Inc., Copyright ©2003, ISBN 81-7758-785-4
  20. Massimo Cossentino, Antonio Chella and Umberto Lo Faso, "Designing agent based systems with UML" ,international conference on agents, 2006.
  21. Raymond J Mooney , Razvan Bunescu, "Mining knowledge from text using information extraction", SIGKDD Explorations, 2003, vol 7 issue 1, pp 3-10.
  22. Russell, S., Norvig, P., "Artificial Intelligence, A Modern Approach", Prentice-Hall, 1995.
  23. Sardinha, J.A.R.P., Ribeiro, P.C., Lucena, C.J.P., Milidiú, R.L., "An Object-Oriented Framework for Building Software Agents", Journal of Object Technology,2003, Vol 2No.1.
  24. Sardinha, J.A.R.P., Milidiú, R.L., Lucena, C.J.P., Paranhos P , "An Object-Oriented Framework for Building Intelligence and learning properties in Software Agents",Journal of object Technology, 2004.
  25. Shahram Rahimi and Norman F. Carver , "A Multi-Agent Architecture for Distributed Domain-Specific Information Integration", Proceedings of the 38th Hawaii International Conference on System Sciences,2005, vol ©IEEE, ISBN 0-7695-2268-8/05.
  26. Soman K P, Shyam Diwakar, Ajay. V, "Insight into Data Mining Theory and Practice", PHI, 2008, ISBN 978-81-203-2897-6.
  27. Stader, J., Macintosh, A., "Capability Modeling and Knowledge Management- In Applications and Innovations in Expert Systems VII", 19th Int Conf on Knowledge-Based Systems and AAI Springer-Verlag, 1999, pp 33-50 ISBN 1-85233-230-1.
  28. Symeonidis A L, Chatzidimitriou K C, Athanasiadis I N, Mitkas P A , "Data Mining for agent reasoning : A synergy for training agents", Engineering Applications of Artificial Intelligence- Elsevier, 2007.
  29. Tobin J Lehman, Stephen W. McLaughry, Peter Wyckoff, "T Spaces : The next Wave", Proceedings of international conference on Machine Learning, 1999.
  30. Tom M Mitchell, "Machine Learning", McGrawHill,1997, ISBN 0070428077.
  31. Weiss, G., "Multiagent systems: a modern approach to distributed artificial intelligence", The MIT Press, 2000.
  32. William E Winkler, "Data Cleaning Methods", Conference SIGKDD’03 , 2003, vol © ACM, ISBN 1-58113-000.
  33. Winston, PH. "Artificial Intelligence", Addison Wesley, 1992.
  34. Wooldridge, M, Jennings, N. R., Kinny, D."The Gaia Methodology for Agent-Oriented Analysis and Design",Kluwer Academic Publishers,2000.
  35. Zili Zhang, Chengqi Zhang and Shichao Zhang, "An Agent-based hybrid framework for database mining", Taylor & Francis Group Applied Artificial Intelligence, 2003,pp 17:383-398.
  36. Zhang Jin , "Research on Data Cleaning in Data Acquisition", conference on data mining, 2001.
Index Terms

Computer Science
Information Sciences

Keywords

Text data Preference Agents MAS MAS-L Architecture Intelligent Data Cleaning IMASDC