Profiling students’ self-regulation with learning analytics: a proof of concept
DATE:
2022
UNIVERSAL IDENTIFIER: http://hdl.handle.net/11093/4554
EDITED VERSION: https://ieeexplore.ieee.org/document/9812587/
UNESCO SUBJECT: 1203.04 Inteligencia Artificial ; 1203.10 Enseñanza Con Ayuda de Ordenador ; 5801.07 Métodos Pedagógicos
DOCUMENT TYPE: article
ABSTRACT
The ability to regulate one's own learning processes is a key factor in educational scenarios.
Self-regulation skills notably affect students' ef cacy when studying and academic performance, for better
orworse. However, neither students or instructors generally have proper understanding of what self-regulated
learning is, the impact that it has or how to assess it. This paper has the purpose of showing how
learning analytics can be used in order to generate simple metrics related to several areas of students' selfregulation,
in the context of a rst-year university course. These metrics are based on data obtained from a
learning management system, complemented by more speci c assessment-related data and direct answers to
self-regulated learning questionnaires. As the end result, simple self-regulation pro les are obtained for each
student, which can be used to identify strengths and weaknesses and, potentially, help struggling students to
improve their learning habits.