Adapting learning activity selection to emotional stability and competence

Publication date

2020

Authors

Alhathli, Manal
Masthoff, JudithISNI 000000012419854X
Beacham, Nigel

Editors

Advisors

Supervisors

Document Type

Article
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Abstract

This paper investigates how humans adapt next learning activity selection (in particular the knowledge it assumes and the knowledge it teaches) to learner personality and competence to inspire an adaptive learning activity selection algorithm. First, the paper describes the investigation to produce validated materials for the main study, namely the creation and validation of learner competence statements. Next, through an empirical study, we investigate the impact on learning activity selection of learners' emotional stability and competence. Participants considered a fictional learner with a certain competence, emotional stability, recent and prior learning activities engaged in, and selected the next learning activity in terms of the knowledge it used and the knowledge it taught. Three algorithms were created to adapt the selection of learning activities' knowledge complexity to learners' personality and competence. Finally, we evaluated the algorithms through a study with teachers, resulting in an algorithm that selects learning activities with varying assumed and taught knowledge adapted to learner characteristics.

Keywords

learning, adaptation, educational recommender, competency, emotional stability, personalization

Citation

Alhathli, M, Masthoff, J & Beacham, N 2020, 'Adapting learning activity selection to emotional stability and competence', Frontiers in Artificial Intelligence, vol. 3, pp. 11. https://doi.org/10.3389/frai.2020.00011