Web UR: Effective Techniques For Web Usage Mining And Recommender System
Date
2013
Authors
G., Poornalatha
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
The proliferation of internet along with the attractiveness of the web in recent years
has made web mining as the research area of great magnitude. Web mining essentially has many advantages which make this technology attractive to researchers.
The analysis of web users’ navigational pattern within a web site can provide useful
information for server performance enhancements, restructuring a web site, direct
marketing in e-commerce etc.
This thesis discusses an effective clustering technique that groups user sessions,
by modifying k-means algorithm. The proposed distance measures namely, the variable length vector distance, sequence alignment based distance measure, and hybrid
sequence alignment measure are explained. The results obtained are validated.
The present work attempts to solve the problem of predicting the next page to
be accessed by the user based on the mining of web server logs, that maintains
the information of users who access the web site. The proposed model yields good
prediction accuracy compared to the existing methods like Markov model, association
rule, ANN etc.
A recommender system based on session collaborative filtering is proposed. The
proposed recommender system is compared with a few other recommender systems by
using precision and recall as metrics, and a better performance is observed. The outcome of prediction and recommender system could be used to suggest any structural
modifications to the web site.
Description
Keywords
Department of Information Technology, Access Patterns, Clustering, Sequence Alignment, Web page prediction, Web page recommendation, Web session.