*Result*: Conditional and Marginal Strengths of Affect Transitions during Computer-Based Learning

Title:
Conditional and Marginal Strengths of Affect Transitions during Computer-Based Learning
Language:
English
Authors:
Yingbin Zhang (ORCID 0000-0002-2664-3093), Luc Paquette (ORCID 0000-0002-2738-3190), Nigel Bosch (ORCID 0000-0003-2736-2899)
Source:
International Journal of Artificial Intelligence in Education. 2025 35(3):1317-1345.
Availability:
Springer. Available from: Springer Nature. One New York Plaza, Suite 4600, New York, NY 10004. Tel: 800-777-4643; Tel: 212-460-1500; Fax: 212-460-1700; e-mail: customerservice@springernature.com; Web site: https://link.springer.com/
Peer Reviewed:
Y
Page Count:
29
Publication Date:
2025
Document Type:
*Academic Journal* Journal Articles<br />Reports - Evaluative
DOI:
10.1007/s40593-024-00430-0
ISSN:
1560-4292
1560-4306
Entry Date:
2025
Accession Number:
EJ1488323
Database:
ERIC

*Further Information*

*Understanding the transitions among affective states during computer-based learning may guide the design of affect-responsive learning environments. Current studies have focused on the marginal strength of an affect transition, which is the average transition tendency over possible affective states preceding the transition. However, marginal strength ignores the potential influence of the preceding state on the transition. In contrast, a conditional strength, which is the transition tendency given a particular state preceding the transition, accounts for this influence and may contribute to a more comprehensive understanding of students' learning processes. This paper presents a methodological framework that utilizes the logistic mixed model to compute the conditional strengths of affect transitions and examines whether conditional and marginal strengths are equal. In three real-world datasets, we found that the conditional and marginal strengths of a transition were not identical in most cases. Prediction analysis indicated that accounting for the state preceding the transitions resulted in better affect prediction performance. In addition, empirical data analyses showed that the framework had higher power in detecting the impact of students' factors on affect and affect transitions. The framework also allows researchers to specify the reference transition when computing a transition strength and handle self-transitions, a critical issue in affect transitions. Empirical data analyses showed that the strength of a transition varied substantially when the reference transition changed, highlighting the careful selection of reference transitions in transition analyses.*

*As Provided*