Sciweavers

ACSC
2008
IEEE

Integrating recommendation models for improved web page prediction accuracy

13 years 11 months ago
Integrating recommendation models for improved web page prediction accuracy
Recent research initiatives have addressed the need for improved performance of Web page prediction accuracy that would profit many applications, ebusiness in particular. Different Web usage mining frameworks have been implemented for this purpose specifically Association rules, clustering, and Markov model. Each of these frameworks has its own strengths and weaknesses and it has been proved that using each of these frameworks individually does not provide a suitable solution that answers today’s Web page prediction needs. This paper endeavors to provide an improved Web page prediction accuracy by using a novel approach that involves integrating clustering, association rules and Markov models according to some constraints. Experimental results prove that this integration provides better prediction accuracy than using each technique individually.
Faten Khalil, Jiuyong Li, Hua Wang
Added 28 May 2010
Updated 28 May 2010
Type Conference
Year 2008
Where ACSC
Authors Faten Khalil, Jiuyong Li, Hua Wang
Comments (0)