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Ontology Generation from Session Data for Web Personalization


Affiliations
1 Madurai Kamaraj University, Madurai-625021, Tamil Nadu, India
2 School of Physics, Madurai Kamaraj University, Madurai-625021, Tamil Nadu, India
 

With an increasing continuous growth of information in WWW it is very difficult for the users to access the interested web pages from the website. Because day by day the information in the web is growing in an increasing manner so without any help system the user may spend more time to get the interested information from the website. To overcome the above problem, in this paper we propose a Model which create a User Interested Page Ontology (UIPO), it will be created by assigning weights and ranking the user interest by count the number of occurrence of each item which was collected from the web logs within a session for all users. The main feature of this model is, it generates UIPO dynamically from that it personalize the interested pages to the web users in their next access The proposed model is very useful for understanding the behavior of the users and also improving the web site design too. The performance of the new model in a session is also discussed in this paper.

Keywords

Web Usage Mining, Web Logs, Ontology, Session, Web Personalization.
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  • Ontology Generation from Session Data for Web Personalization

Abstract Views: 129  |  PDF Views: 0

Authors

P. Arun
Madurai Kamaraj University, Madurai-625021, Tamil Nadu, India
K. Iyakutti
School of Physics, Madurai Kamaraj University, Madurai-625021, Tamil Nadu, India

Abstract


With an increasing continuous growth of information in WWW it is very difficult for the users to access the interested web pages from the website. Because day by day the information in the web is growing in an increasing manner so without any help system the user may spend more time to get the interested information from the website. To overcome the above problem, in this paper we propose a Model which create a User Interested Page Ontology (UIPO), it will be created by assigning weights and ranking the user interest by count the number of occurrence of each item which was collected from the web logs within a session for all users. The main feature of this model is, it generates UIPO dynamically from that it personalize the interested pages to the web users in their next access The proposed model is very useful for understanding the behavior of the users and also improving the web site design too. The performance of the new model in a session is also discussed in this paper.

Keywords


Web Usage Mining, Web Logs, Ontology, Session, Web Personalization.