Affiliations: School of Computing Science, Middlesex University,
Trent Park, Bramley Road, London, N14 4YZ, UK. [email protected];
http://www.cs.mdx.ac.uk/staffpages/serengul/ | UCL Interaction Centre, University College London, 26
Bedford Way, London, WC1H 0AP, UK. [email protected];
http://www.uclic.ucl.ac.uk/annb/
Abstract: One problem that commonly faces hypertext users, particularly in
educational situations, is the difficulty of identifying pages of information
most relevant to their current goals or interests. In this paper, we discuss
the technical feasibility and the utility of applying machine learning
algorithms to generate personalised adaptation on the basis of a user's
browsing history in hypertext, without additional input from the user. In order
to investigate the viability of this approach, we developed a Web-based
information system called MLTutor. The design of MLTutor aims to remove the
need for pre-defined user profiles and replace them with a dynamic user
profile-building scheme in order to provide individual adaptation. In MLTutor,
this adaptation is achieved by a combination of conceptual clustering and
inductive machine learning algorithms. An evaluation technique that probes the
detailed effectiveness of the adaptation is presented. The use of dynamic user
profiles has been shown to be technically feasible; however, while a
superficial evaluation indicates that it is educationally effective, the more
thorough evaluation performed here shows that the positive results may be
attributed to other causes. This demonstrates the need for thorough evaluation
of adaptive hypertext systems.