Asian Journal of Information Technology

Year: 2011
Volume: 10
Issue: 2
Page No. 84 - 95

A Review of Some Issues and Challenges in Current Agent-Based Distributed Association Rule Mining

Authors : A.O. Ogunde, O. Folorunso, A.S. Sodiya and G.O. Ogunleye

References

Agrawal, R. and R. Srikant, 1994. Fast algorithm for mining association rules. Proceedings of the 20th International Conference on Very Large Data Bases, September, 12-15, 1994, San Francisco, CA., USA., pp: 487-499.

Agrawal, R., T. Imielinski and A. Swami, 1993. Mining association rules between sets of items in large databases. Proceedings of the ACM SIGMOD International Conference on Management of Data, May 25-28, 1993, Washington, DC., USA., pp: 207-216.

Albashiri, K.A., 2010. EMADS: An investigation into the isssues of multi-agent data mining. Ph.D. Thesis, The University of Liverpool, Ashton Building, Ashton Street, Liverpool L69 3BX, United Kingdom.

Albashiri, K.A., F. Coenen and P. Leng, 2009. EMADS: An extendible multi-agent data miner. Knowledge Based Syst. J., 22: 523-528.
CrossRef  |  

Ariwa, E.I., M.B. Senousy and M.M. Medhat, 2003. Informatization and E-business model application for distributed data mining using mobile agents. Proceedings of the International Conference WWW/Internet, (WWWI`03), USA., pp: 85-92.

Ashrafi, M.Z., D. Taniar and K. Smith, 2004. ODAM: An optimized distributed association rule mining algorithm. IEEE Distributed Syst. Online, Vol. 5, No. 3. 10.1109/MDSO.2004.1285877

Badal, N. and S. Tripathi, 2010. Frequent data itemset mining using VS_apriori algorithms. Int. J. Comput. Sci. Eng., 2: 1111-1118.

Bailey, S., R. Grossman, H. Sivakumar and A. Turinsky, 1999. Papyrus: A system for data mining over local and wide area clusters and super-clusters. Proceedings of the Conference on Supercomputing, Nov. 14-19, Portland, USA., pp: 63-63.

Botia, A., R. Garijo and F. Skarmeta, 1998. A generic data mining system: Basic design and implementation guidelines. Proceedings of the Workshop on Distributed Data Mining at the 4th International Conference on Data Mining and Knowledge Discovery (KDD-98).

Byrd, M. and C. Franke, 2007. The state of distributed data mining. ECS265 Project Report, UC Davis, Davis CA., USA.

Cao, L., C. Luo and C. Zhang, 2007. Agent-mining interaction: An emerging area. Autonomous Intell. Syst.: Multi-Agents Data Min., 4476: 60-63.
CrossRef  |  

Chattratichat, J., J. Darlington, Y. Guo, S. Hedvall, M. Kohler and J. Syed, 1999. An Architecture for distributed enterprise data mining. Proceedings of the 7th International Conference on High-Performance Computing and Networking, April 1999, Springer-Verlag, London, UK., pp: 573-582.

Chen, M.S., J. Han and P.S. Yu, 1996. Data mining: An overview from a database perspective. IEEE Trans. Knowledge Data Eng., 8: 866-883.
CrossRef  |  Direct Link  |  

Chia, T.H. and S. Kannapan, 1997. Strategically mobile agents. Proceedings of the 1st International Workshop on Mobile Agents, April 7-8, Springer-Verlag London, UK., pp: 149-161.

Coenen, F., G. Goulbourne and P. Leng, 2004. Tree structures for mining association rules. Data Min. Knowledge Discovery, 8: 25-51.
CrossRef  |  

Crowley, C.P., 1997. Operating Systems: A Design-Oriented Approach. Irwin Publications, Boston, pp: 883.

Dale, J., 1997. A mobile agent architecture to support distributed resource information management. Ph.D. Thesis, Department of Electronics and Computer Science, Faculty of Engineering, University of Southampton.

Gray, R., 1995. Proposal: Transportable agents. Ph.D. Thesis, Department of Computer Science, Dartmouth College.

Gray, R.S., D. Kotz, G. Cybenko and D. Rus, 2000. Mobile agents: Motivations and state of the art systems. Technical Report.

Grossman, R., S. Kasif, R. Moore, D. Rocke and J. Ullman, 1999. Data mining research: Opportunities and challenges. A Report of Three Workshops on Mining Large, Massive and Distributed Data.

Guo, Y. and J. Sutiwaraphun, 1999. Integrating knowledge in distributed data mining. Department of Computing, Imperial College.

Gyorodi, C., R. Gyorodi and S. Holban, 2004. A comparative study of association rules mining algorithms. Proceedings of the 1st Romanian- Hungarian Joint Symposium on Applied Computational Intelligence, May 25-26, Timisoara, Romania, pp: 213-222.

Han, J., J. Pei and Y. Yin, 2000. Mining frequent patterns without candidate generation. Proceedings of the ACM SIGMOD International Conference on Management of Data, May 15-18, 2000, Dallas, TX., USA., pp: 1-12.

Han, J., J. Pei, Y. Yin and R. Mao, 2004. Mining frequent patterns without candidate generation: A frequent-pattern tree approach. Data Mining Knowledge Discovery, 8: 53-87.
CrossRef  |  Direct Link  |  

Hipp, J., U. Guntzer and G. Nakhaeizadeh, 2000. Algorithms for association rule mining-a general survey and comparison. SIGKDD Explorations, 2: 58-64.

Ivancsy, R., F. Kovacs and I. Vajk, 2004. An analysis of association rule mining algorithms. Proceedings of the 4th International ICSC Symposium on Engineering of Intelligent Systems, Feb. 29-March 2, Island of Madeira, Portugal, pp: 774-778.

Jensen, D., M. Rattigan and H. Blau, 2003. Information awareness: A prospective technical assessment. Proceedings of the 9th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, Aug. 24-27, Washington, DC. USA., pp: 378-387.

Johnson, T., L.V.S. Lakshmanan and R.T. Ng, 2000. The 3W model and algebra for unified data mining. Proceedings of the 26th International Conference on Very Large Data Bases, Sept. 10-14, Cairo, Egypt, pp: 21-32.

Klusch, M., S. Lodi and G. Moro, 2003. Agent-Based Distributed Data Mining: The KDEC Scheme. In: Intelligent Information Agents: The Agent Link Perspective, Klusch, M., S. Bergamaschi, P. Edwards and P. Petta (Eds.). Springer, New York.

Kotsiantis, S. and D. Kanellopoulos, 2006. Association rules mining: A recent overview. GESTS Int. Trans. Comput. Sci. Eng., 32: 71-82.
Direct Link  |  

Krebs, B., 2003. Online piracy spurs high-tech arms race. The Washington Post. http://www.washingtonpost.com/ac2/wp-dyn/A34439-2003Jun26.

Legler, T., W. Lehner, J. Schaffner and J. Kruger, 2009. Robust and distributed top-n frequent-pattern mining with SAP BW accelerator. J. Proc. VLDB Endowment, 2: 1438-1449.

Lloyd, B., 2003. Been gazumped by Google: Trying to make sense of the Florida update. Search Engine Guide, http://www.searchengineguide.com/lloyd/2003/1125_bl1.html.

Malhi, B., 1998. Providing support for resource management tools in a wide area high performance distributed data mining system. Master Thesis, Laboratory for Advanced Computing, University of Illinois at Chicago.

Martin, G., A. Unruh and S. Urban, 1999. An agent infrastructure for knowledge discovery and event detection. Technical Report MCC-INSL-003-99, Microelectronics and Computer Technology Corporation (MCC).

Paul, S. and P. Saravanan, 2008. Knowledge integration in a parallel and distributed environment with association rule mining using XML data. Int. J. Comput. Sci. Network Secur., 8: 334-339.

Paul, S., 2010. An optimized distributed association rule mining algorithm in parallel and distributed data mining with xml data for improved response time. Int. J. Comput. Sci. Inform. Technol., 2: 88-101.
Direct Link  |  

Prodromidis, A., 1999. Management of intelligent learning agents in distributed data mining systems. Ph.D. Thesis, School of Arts and Science, Columbia University.

Provost, F. and V. Kolluri, 1997. Scaling up inductive algorithms: An overview. Proceedings of the 3rd International Conference on Knowledge Discovery and Data Mining, Aug. 14-17, Newport Beach, California, USA., pp: 239-242.

Rao, V.S. and S. Vidyavathi, 2010. Distributed data mining and mining multi-agent data. Int. J. Comput. Sci. Eng., 2: 1237-1244.

Rudowsky, I., 2004. Intelligent agents. Commun. Assoc. Inform. Syst., 14: 275-290.

Silvestri, C., 2006. Distributed and stream data mining algorithms for frequent pattern discovery. Ph.D. Thesis, Universita Ca Foscari di Venezia.

Stolfo, S., A.L. Prodromidisz, S. Tselepis, W. Lee, D.W. Fan and 1997. JAM: Java agents for meta-learning over distributed databases. Proceedings of the 3rd International Conference on Data Mining and Knowledge Discovery, Aug. 14-17, AAAI Press, Newport Beach, California, pp: 74-81.

Symeonidis, A.L. and P.A. Mitkas, 2006. Agent Intelligence Through Data Mining (Multiagent Systems, Artificial Societies and Simulated Organizations). Vol. 26, Springer-Verlag, New York, pp: 1-206.

Umarani, V. and M. Punithavalli, 2010. Sampling based association rules mining-a recent overview. Int. J. Comput. Sci. Eng., 2: 314-318.

Webb, G.W., 2000. Efficient search for association rules. Proceedings of the 6th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, Aug. 20-23, Boston, MA. USA., pp: 99-107.

Wooldridge, M., 2009. An Introduction to MultiAgent Systems. 2nd Edn., John Wiley and Sons, New York, pp: 461.

Zaki, M.J., 1999. Parallel and distributed association mining: A survey. IEEE Concurrency Special Issue Parallel Mechan. Data Mining, 7: 14-25.
CrossRef  |  

Design and power by Medwell Web Development Team. © Medwell Publishing 2024 All Rights Reserved