Open Access Open Access  Restricted Access Subscription Access

A Semantically Enriched Web Usage Based Recommendation Model


Affiliations
1 Department of Computer Science and Engineering, CVR College of Engineering, Ibrahimpatnam, R.R.District, Andhra Pradesh, India
2 JNTUH College of Engineering, Jagityala, Karimnagar District, Andhra Pradesh, India
 

With the rapid growth of internet technologies, Web has become a huge repository of information and keeps growing exponentially under no editorial control. However the human capability to read, access and understand Web content remains constant. This motivated researchers to provide Web personalized online services such as Web recommendations to alleviate the information overload problem and provide tailored Web experiences to the Web users. Recent studies show that Web usage mining has emerged as a popular approach in providing Web personalization. However conventional Web usage based recommender systems are limited in their ability to use the domain knowledge of the Web application. The focus is only on Web usage data. As a consequence the quality of the discovered patterns is low. In this paper, we propose a novel framework integrating semantic information in the Web usage mining process. Sequential Pattern Mining technique is applied over the semantic space to discover the frequent sequential patterns. The frequent navigational patterns are extracted in the form of Ontology instances instead of Web page views and the resultant semantic patterns are used for generating Web page recommendations to the user. Experimental results shown are promising and proved that incorporating semantic information into Web usage mining process can provide us with more interesting patterns which consequently make the recommendation system more functional, smarter and comprehensive.

Keywords

Web Usage Mining, Semantic Web, Domain Ontology, Sequential Pattern Mining, Recommender Systems.
User
Notifications
Font Size

Abstract Views: 352

PDF Views: 158




  • A Semantically Enriched Web Usage Based Recommendation Model

Abstract Views: 352  |  PDF Views: 158

Authors

C. Ramesh
Department of Computer Science and Engineering, CVR College of Engineering, Ibrahimpatnam, R.R.District, Andhra Pradesh, India
K. V. Chalapati Rao
Department of Computer Science and Engineering, CVR College of Engineering, Ibrahimpatnam, R.R.District, Andhra Pradesh, India
A. Goverdhan
JNTUH College of Engineering, Jagityala, Karimnagar District, Andhra Pradesh, India

Abstract


With the rapid growth of internet technologies, Web has become a huge repository of information and keeps growing exponentially under no editorial control. However the human capability to read, access and understand Web content remains constant. This motivated researchers to provide Web personalized online services such as Web recommendations to alleviate the information overload problem and provide tailored Web experiences to the Web users. Recent studies show that Web usage mining has emerged as a popular approach in providing Web personalization. However conventional Web usage based recommender systems are limited in their ability to use the domain knowledge of the Web application. The focus is only on Web usage data. As a consequence the quality of the discovered patterns is low. In this paper, we propose a novel framework integrating semantic information in the Web usage mining process. Sequential Pattern Mining technique is applied over the semantic space to discover the frequent sequential patterns. The frequent navigational patterns are extracted in the form of Ontology instances instead of Web page views and the resultant semantic patterns are used for generating Web page recommendations to the user. Experimental results shown are promising and proved that incorporating semantic information into Web usage mining process can provide us with more interesting patterns which consequently make the recommendation system more functional, smarter and comprehensive.

Keywords


Web Usage Mining, Semantic Web, Domain Ontology, Sequential Pattern Mining, Recommender Systems.