Kamdar, TapanJoshi, Anupam2019-01-302019-01-302000-11-20http://hdl.handle.net/11603/12658Personalization of content returned from a web site is an important problem in general, and affects e-commerce and e-services in particular. Targeting appropriate information or products to the end user can significantly change (for the better) the users experience on a web site. One possible approach to web personalization is to mine typical user profiles from the vast amount of historical data stored in access logs. In the absence of any a priori knowledge, unsupervised classification or clustering methods are ideally suited to analyze the semi-structured log data of user accesses by examining user sessions. User access profiles are generated by clustering user sessions on the basis of pair-wise dissimilarities using a robust fuzzy clustering algorithm.We present a system that mines the logs to get profiles and uses them to automatically generate a web page containing URLs the user might be interested in. We also evaluate the efficacy of sessionizing the information with and without the use of cookies.19 pagesen-USThis item is likely protected under Title 17 of the U.S. Copyright Law. Unless on a Creative Commons license, for uses protected by Copyright Law, contact the copyright holder or the author.On Creating Adaptive Web Servers Using Weblog MiningText