IJSER Home >> Journal >> IJSER
International Journal of Scientific and Engineering Research
ISSN Online 2229-5518
ISSN Print: 2229-5518 2    
Website: http://www.ijser.org
scirp IJSER >> Volume 3,Issue 2,February 2012
A Reconciling Website System To Enhance Efficiency With Web Mining Techniques
Full Text(PDF, )  PP.498-500  
Joy Shalom Sona, Prof. Asha Ambhaikar
Web Structure Mining; Web Content Mining; Reconciling Website System; Browsing Efficiency.
Existing website systems are not easier for user to extract information and having some shortcomings. To enhance these shortcomings we propose a new reconciling website system. It is new way to increase the efficiency of web site system using web mining techniques. It will help to reorganize the website structure to increase browsing efficiency and also to make it easier for user browsing. This paper concentrates on the browsing efficiency of website. For achieving optimize efficiency the paper introduces an algorithms to calculate efficiency accurately and to suggest how to enhance user browsing efficiency. This can be achieved by web mining techniques
[1] Ji-Hyun Lee, Wei-Kun Shiu: An adaptive website system to improve efficiency with web mining techniques. Advanced EngineeringInformatics 18(3): 129-142 (2004)

[2] R. Kosala, H. Blockeel, “Web Mining Research: A Survey”, SIGKDD Explorations, Newsletter of the ACM Special Interest Group on Knowledge Discovery and Data Mining Vol. 2, No. 1 pp 1-15, 2000.

[3] Perkowitz M, Etzioni O. Adaptive web site: an AI challenge. IJCAI- 97 1997.

[4] Koutri M, Daskalaki S, Avouris N. Adaptive interaction with web site: an overview of methods and techniques. Computer Science and Information Technologies, CSIT 2002.

[5] Srivastava J, Cooley R, Deshpande M, Tan P-N. Web usage mining: discovery and applications of usage patterns from web data. ACM SIGKDD 2000.

[6] Raskin J. The human interface, first ed. Menlo, CA: Stratford Publishing, Inc.; 2000.

[7] Srikant R, Yang Y. Mining web logs to improve website organization. ACM 2001.

[8] Spiliopoulou M, Faulstich L. Wum: A web utilization miner. EDBT Workshop WebDB 98. Spain: Valencia; 1998.

[9] Wu K-L, Yu P-S, Ballman A. Speed-tracer: A web usage mining and analysis tool. IBM Systems Journal 1998;37(1).

[10] Zaiane O, Xin M, Han J. Discovering web access patterns and trends by applying olap and data mining technology on web logs. In: Advances in Digital Libraries. CA: Santa Barbara; 1998. p.19–29.

[11] Shahabi C, Zarkesh A, Adibi J, Shah V. Knowledge discovery from users web-page navigation Workshop on Research Issues in Data Engineering. England: Birmingham; 1997.

[12] Chen M-S, Park J-S, Yu P-S. Data mining for path traversal patterns in a web environment. 16th International Conference on Distributed Computing Systems 1996;385–92.

[13] Zarkesh A, Adibi J, Shahabi C, Sadri R, Shah V. Analysis and design of server informative www-sites 6th International Conference on Information and Knowledge Management. Nevada: Las Vegas; 1997.

[14] Nakayama T, Kato H, Yamane Y. Discovering the gap between web site designers’ expectations and users’ behavior. Computer Networks 2000;33(1-6):811–22.

[15] Nielsen//NetRatings_Global. Global Internet Index; March 2001

[16] Wang, May and Yen, Benjamin, "Web Structure Reorganization to Improve Web Navigation Efficiency" (2007). PACIS 2007 Proceedings. Paper 46.

[17] M. Kilfoil , A. Ghorbani , W. Xing , Z. Lei , J. Lu , J. Zhang , X. Xu,” Toward An Adaptive Web: The State of the Art and Science (2003), CNSR 2003.

Untitled Page