Saturday 20th of April 2024
 

Merging Data Mining Techniques for Web Page Access Prediction: Integrating Markov Model with Clustering


Triloknath Pandey, Ranjita Kumari Dash, Alkananda Tripathy and Barnali Sahu

Web page access prediction gained its importance from the ever increasing number of e-commerce Web information systems and e-businesses. Web page prediction, that involves personalizing the Web users browsing experiences, assists Web masters in the improvement of the Website structure and helps Web users in navigating the site and accessing the information they need. The most widely used approach for this purpose is the pattern discovery process of Web usage mining that entails many techniques like Markov model, association rules and clustering. Implementing pattern discovery techniques as such helps predict the next page to be accessed by the Web user based on the users previous browsing patterns. However, each of the aforementioned techniques has its own limitations, especially when it comes to accuracy and space complexity. This paper achieves better accuracy as well as less state space complexity and rules generated by performing the following combinations. We integrate low -order Markov model and clustering. The data sets are clustered and Markov model analysis is performed on each cluster instead of the whole data sets. The outcome of the integration is better accuracy than the combination with less state space complexity than higher order Markov model.

Keywords: Markov Model, Pattern discovery, clustering, space complexity, silhouette value.

Download Full-Text


ABOUT THE AUTHORS

Triloknath Pandey
Assistant Professor,Department Of Computer Science & Engineering,Institute Of Technical Education & Research,Siksha \'O\'Anusandhan University

Ranjita Kumari Dash
Assistant Professor,Department Of Computer Science & Engineering,Institute Of Technical Education & Research,Siksha \'O\'Anusandhan University

Alkananda Tripathy
Assistant Professor,Department Of Computer Science & Engineering,Institute Of Technical Education & Research,Siksha \'O\'Anusandhan University

Barnali Sahu
Assistant Professor,Department Of Computer Science & Engineering,Institute Of Technical Education & Research,Siksha \'O\'Anusandhan University


IJCSI Published Papers Indexed By:

 

 

 

 
+++
About IJCSI

IJCSI is a refereed open access international journal for scientific papers dealing in all areas of computer science research...

Learn more »
Join Us
FAQs

Read the most frequently asked questions about IJCSI.

Frequently Asked Questions (FAQs) »
Get in touch

Phone: +230 911 5482
Email: info@ijcsi.org

More contact details »