Affiliations: The SCRE Centre, University of Glasgow, St.
Andrew's Building, 11 Eldon Street, Glasgow G3 6NH, Scotland.
E-mail: {n.vanlabeke,paul.brna}@scre.ac.uk | Sistema de Universidad Virtual, Universidad de
Guadalajara, Escuela Militar de Aviación 16, Col. Ladrón de
Guevara, 44170 Guadalajara, Mexico. E-mail: [email protected]
Abstract: Opening a model of the learner is a potentially complex operation.
There are many aspects of the learner that can be modelled, and many of these
aspects may need to be opened in different ways. In addition, there may be
complicated interactions between these aspects which raise questions both about
the accuracy of the underlying model and the methods for representing a
holistic view of the model. There can also be complex processes involved in
inferring the learner's state, and opening up views onto these
processes – which leads to the issues that are the main focus of this
paper: namely, how can we open up the process of interpreting the
learner's behaviour in such a manner that the learner can both
understand the process and challenge the interpretation in a meaningful manner.
The paper provides a description of the design and implementation of an open
learner model (termed the xOLM) which features an approach to breaking free
from the limitations of "black box" interpretation.
This approach is based on a Toulmin-like argumentation structure together with
a form of data fusion based on an adaptation of Dempster-Shafer. However, the
approach is not without its problems. The paper ends with a discussion of the
possible ways in which open learner models might open up the interpretation
process even more effectively.
Keywords: Open learner models, argumentation, Dempster-Shafer