Open Access Open Access  Restricted Access Subscription Access

“Survey of Various Techniques for WebUsage Minning”


Affiliations
1 Department of Computer Engineering, University College of Engineering, Punjabi University, Patiala, India
 

Web usage mining is the area of data mining which deals with the discovery and analysis of usage patterns from Web data, specifically web logs, in order to improve web based applications. Web usage mining consists of three phases, pre-processing, pattern discovery, and pattern analysis. After the completion of these three phases the user can find the required usage patterns and use these information for the specific needs. This paper presents several data preparation techniques in order to identify unique users and user sessions. It also provides a detailed information of various Web usage mining areas to work in. The survey of the existing work is also provided. Finally, a brief overview of the applications of Webusage mining (Letizia, WebSIFT, Adaptive Websites).

Keywords

World Wide Web, Data Mining, Web Usage Mining, Information Retrieval, Information Extraction.
User
Notifications
Font Size

Abstract Views: 178

PDF Views: 3




  • “Survey of Various Techniques for WebUsage Minning”

Abstract Views: 178  |  PDF Views: 3

Authors

Navjot Kaur
Department of Computer Engineering, University College of Engineering, Punjabi University, Patiala, India
Himanshu Aggarwal
Department of Computer Engineering, University College of Engineering, Punjabi University, Patiala, India

Abstract


Web usage mining is the area of data mining which deals with the discovery and analysis of usage patterns from Web data, specifically web logs, in order to improve web based applications. Web usage mining consists of three phases, pre-processing, pattern discovery, and pattern analysis. After the completion of these three phases the user can find the required usage patterns and use these information for the specific needs. This paper presents several data preparation techniques in order to identify unique users and user sessions. It also provides a detailed information of various Web usage mining areas to work in. The survey of the existing work is also provided. Finally, a brief overview of the applications of Webusage mining (Letizia, WebSIFT, Adaptive Websites).

Keywords


World Wide Web, Data Mining, Web Usage Mining, Information Retrieval, Information Extraction.