Mapping the self in self‐regulation using complex dynamic systems approach

Author:

Saqr Mohammed1ORCID,López‐Pernas Sonsoles1ORCID

Affiliation:

1. School of Computing University of Eastern Finland Joensuu Finland

Abstract

Complex dynamic systems offer a rich platform for understanding the individual or the person‐specific mechanisms. Yet, in learning analytics research and education at large, a complex dynamic system has rarely been framed, developed, or used to understand the individual student where the learning process takes place. Individual (or person‐specific) methods can accurately and precisely model the individual person, create person‐specific models, and devise unique parameters for each individual. Our study used the latest advances in complex systems dynamics to study the differences between group‐based and individual self‐regulated learning (SRL) dynamics. The findings show that SRL is a complex, dynamic system where different sub‐processes influence each other resulting in the emergence of non‐trivial patterns that vary across individuals and time scales, and as such far from the uniform picture commonly theorized. We found that the average SRL process does not reflect the individual SRL processes of different people. Therefore, interventions derived from the group‐based SRL insights are unlikely to be effective in personalization. We posit that, if personalized interventions are needed, modelling the person with person‐specific methods should be the guiding principle. Our study offered a reliable solution to model the person‐specific self‐regulation processes which can serve as a ground for understanding and improving individual learning and open the door for precision education. Practitioner notesWhat is already known about this topic Self‐regulation is a catalyst for effective learning and achievement. Our understanding of SRL personalization comes from insights based on aggregate group‐based data. What this paper adds Every student has their own unique SRL process that varies from the average in non‐trivial ways. We offer a credible method for mapping the individualized SRL process. SRL dynamics vary across time scales. That is, the trait dynamics are different from the state dynamics, and they should be supported differently. Implications for practice and/or policy Personalization can best be achieved if based on unique person‐specific idiographic methods. Supporting learning and SRL in particular can be more efficient when we understand the differences across time scales and persons and apply insights accordingly. The general SRL average should not be expected to work for everyone.

Funder

Academy of Finland

Publisher

Wiley

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Idiographic artificial intelligence to explain students' self-regulation: Toward precision education;Learning and Individual Differences;2024-08

2. A Scoping Review of Idiographic Research in Education: Too Little, But Not Too Late;2024 IEEE International Conference on Advanced Learning Technologies (ICALT);2024-07-01

3. Capturing where the learning process takes place: A person-specific and person-centered primer;Learning and Individual Differences;2024-07

4. Adaptive support for self‐regulated learning in digital learning environments;British Journal of Educational Technology;2024-05-05

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