A Proposed Methodology on Predicting Visitor’s Behavior based on Web Mining Technique

Abstract

The evolution of the internet in recent decades enlarge the website's reports with the records of user’s activities and behaviors that registered in the web server which can be created automatically in the web access log file. The feedback concerning the user’s activities, performance and any problem that may be occur including the cyber security approaches of the web server represents the principal raison of applying the web mining technique. In this paper, we proposed a methodology on predicting users behavior based on the web mining technique by creating and executing analysis applications using a Deep Log Analyzer tool that applied on the web server access log of our faculty website. Furthermore, an associated programmed application has been developed which employs the extracted data into dynamic visualizations reports(tables, graphs, charts) in order to help the web system administrator to increase the web site effectiveness, we had creating a suitable access patterns that permits to identify the interacting users behaviors and the interesting usage patterns such as the occurred errors, potential visitors, navigation activities, behavioral analysis, diagnostic study, and security alerts for intrusion prevention. Moreover, the obtained results achieved the aim of producing a dynamic monitoring by extracting investigation summaries which analyses the discovered access patterns that registered in the faculty web server in order to improve the web site usability by tracking the user’s behaviors and the browsing activities. Our proposed tool will highlight providing a security alerts against the malicious users by predicting the malicious behaviors taking into consideration all the discovered vulnerabilities by detecting the corrupted links used by the abnormal visitors.

Authors and Affiliations

Abdel Karim Kassem, Bassam Daya, Pierre Chauvet

Keywords

Related Articles

On an internal multimodel control for nonlinear multivariable systems - A comparative study

An internal multimodel control designed for nonlinear multivariable systems, is proposed in this paper. This approach is based on the multi-modeling of nonlinear systems and the realization of a specific inversion of eac...

Feature Fusion: H-ELM based Learned Features and Hand-Crafted Features for Human Activity Recognition

Recognizing human activities is one of the main goals of human-centered intelligent systems. Smartphone sensors produce a continuous sequence of observations. These observations are noisy, unstructured and high dimension...

A Study on the Conception of Generic Fuzzy Expert System for Surveillance

This paper deals with using fuzzy logic to minimize uncertainty effects in surveillance. It studies the conception of an efficient fuzzy expert system that had two characteristics: generic and robust to uncertainties. An...

A Short Description of Social Networking Websites And Its Uses

Now days the use of the Internet for social networking is a popular method among youngsters. The use of collaborative technologies and Social Networking Site leads to instant online community in which people communicate...

 An Adaptive parameter free data mining approach for healthcare application

  In today’s world, healthcare is the most important factor affecting human life. Due to heavy work load it is not possible for personal healthcare. The proposed system acts as a preventive measure for determining w...

Download PDF file
  • EP ID EP429174
  • DOI 10.14569/IJACSA.2018.091236
  • Views 103
  • Downloads 0

How To Cite

Abdel Karim Kassem, Bassam Daya, Pierre Chauvet (2018). A Proposed Methodology on Predicting Visitor’s Behavior based on Web Mining Technique. International Journal of Advanced Computer Science & Applications, 9(12), 245-255. https://europub.co.uk/articles/-A-429174