Supporting Self-Regulated Personalised Learning through Competence-Based Knowledge Space Theory

Author:

Steiner Christina M.1,Nussbaumer Alexander1,Albert Dietrich1

Affiliation:

1. Cognitive Science Section, Department of Psychology, University of Graz, Austria

Abstract

This article presents two current research trends in e-learning that at first sight appear to compete. Competence-Based Knowledge Space Theory (CBKST) provides a knowledge representation framework which, since its invention by Doignon & Falmagne, has been successfully applied in various e-learning systems (for example, Adaptive Learning with Knowledge Spaces [ALEKS] and Enhanced Learning Experience and Knowledge Transfer [ELEKTRA]), providing automated personalisation to learners' current knowledge and competence levels. Principles of self-regulated learning (SRL), pioneered by, for example, Zimmerman, however, argue for increased learner control, thus resulting in giving learners greater responsibility over their e-learning. The research presented in this article shows that skill-based visualisations in the tradition of CBKST and SRL-based autonomy are in no way conflicting but rather complement each other towards an integrated approach of self-regulated personalised learning. The research has been carried out and technologically translated into a set of visual tools for supporting the whole learning cycle within the scope of the iClass project.

Publisher

SAGE Publications

Subject

Education

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1. Knowledge structures construction and learning paths recommendation based on formal contexts;International Journal of Machine Learning and Cybernetics;2023-10-21

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3. Knowledge structure construction and skill reduction methods based on multi-scale context;Journal of Experimental & Theoretical Artificial Intelligence;2023-02-28

4. Mediating learning with learning analytics technology: guidelines for practice;Teaching in Higher Education;2022-05-12

5. Skills and fuzzy knowledge structures;Journal of Intelligent & Fuzzy Systems;2022-02-02

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