Web mining for better web usability
Abstract
To develop more effective user-oriented learning techniques for the Web, we
need to be able to identify a meaningful session unit from which we can learn.
Without this, we could have a high risk to mix up the different user’s activity in the
web. We are interested to detect boundaries of sequences between related
sessions that would group the activities for a learning purpose. But identification
of user session is not always easy where logged on and cookie information is not
available.
The problem of predicting user access in web pages has recently gets a
significant attention. Several algorithms have been proposed, which find
important applications, like user profiling, web perfecting, design of adaptive web
sites, etc. In all these applications the main issue is the development of an
effective prediction system. Because of its importance in reducing user perceived
latency present in every Web-based application, which is a usability issue.
This thesis paper describes a data mining technique for identify user sessions
from huge amount of web log data and a web system, which makes prediction
about the user target page by using those sessions to guide the user in World
Wide Web.