IRAIMay 8, 2014

A Vague Improved Markov Model Approach for Web Page Prediction

arXiv:1405.7868v11 citations
Originality Synthesis-oriented
AI Analysis

This is an incremental improvement for web users and researchers focused on enhancing web prefetching systems.

The paper tackles web page prediction to improve web access efficiency by proposing a vague improved Markov model with pruning rules and association mining, but does not provide concrete numerical results.

Today most of the information in all areas is available over the web. It increases the web utilization as well as attracts the interest of researchers to improve the effectiveness of web access and web utilization. As the number of web clients gets increased, the bandwidth sharing is performed that decreases the web access efficiency. Web page prefetching improves the effectiveness of web access by availing the next required web page before the user demand. It is an intelligent predictive mining that analyze the user web access history and predict the next page. In this work, vague improved markov model is presented to perform the prediction. In this work, vague rules are suggested to perform the pruning at different levels of markov model. Once the prediction table is generated, the association mining will be implemented to identify the most effective next page. In this paper, an integrated model is suggested to improve the prediction accuracy and effectiveness.

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