Using Adaptive Link Hiding to Provide Learners with Additional Learning Materials in a Web-Based System
Date
2012Author
Oboko, Robert Obwocha
Wagacha, Peter Waiganjo
Type
ArticleLanguage
enMetadata
Show full item recordAbstract
This article reports results from a web-based online learning experiment that provided learning support to
students in an object-oriented programming course. This support was intended to assist learners in
acquiring domain knowledge (in this case object-oriented programming knowledge) which they were to
use later for problem solving. The course was delivered using adaptive support techniques in which the
system interface adjusts in ways that suit different learners. The impact of using one of the implemented
support techniques, adaptive link hiding, is reported here. Using this technique, the system provided links
to additional learning materials according to its prediction whether or not a learner was likely to access
them. The system’s decision was guided by a machine learning algorithm, the Naïve Bayes Classifier
(NBC). The system’s prediction was compared to actual access of these additional learning materials,
yielding a predictive accuracy of 72%.
Citation
Journal of the Research Center for Educational TechnologyPublisher
Research Center for Educational Technology School of Computing and Informatics
Subject
Machine Learning AlgorithmsLearner Modelling
Naïve Bayes Classifier
Adaptive Navigation Support
Adaptive Link Hiding
Learning Material Links
Web-Based Learning
Learner Knowledge Level