Enhancing Emotional Intelligence Through Generative AI‐Supported Digital Storytelling: A Mixed Methods Study Using Epistemic Network Analysis
Journal of Computer Assisted Learning
Published online on April 15, 2026
Abstract
["Journal of Computer Assisted Learning, Volume 42, Issue 3, June 2026. ", "\nABSTRACT\n\nBackground\nSocial–emotional learning (SEL) has gained increasing attention in recent years due to its importance for students' emotional regulation, motivation and learning engagement. Digital storytelling (DST) has been widely recognised as a promising approach for supporting SEL; however, students often encounter challenges related to creative expression and technical execution during the storytelling process.\n\n\nObjective\nAlthough DST holds considerable promise for supporting SEL, students often encounter challenges related to creative expression when using DST, which may limit their learning effectiveness. To address this issue, this study proposed a generative‐AI (GAI)‐supported DST approach.\n\n\nMethod\nA quasi‐experimental design was adopted with 62 junior high school students. The experimental group (n = 30) learned using the GAI‐DST approach, while the control group (n = 32) adopted a conventional DST approach. Quantitative data were collected through pre‐ and post‐questionnaires on emotional intelligence and self‐efficacy. Qualitative interview data were further analysed using epistemic network analysis (ENA) to explore students' learning perceptions and cognitive‐emotional patterns.\n\n\nResults and Conclusions\nResults showed that the GAI‐DST approach significantly enhanced students' self‐efficacy and the motivation dimension of emotional intelligence, while no significant differences were found in other emotional intelligence dimensions. The qualitative findings revealed that students in the GAI‐DST group demonstrated a stronger orientation towards practice‐based learning, tool‐supported problem solving and emotional engagement, whereas students in the control group focused more on mastering basic skills. These findings suggest that the GAI‐DST approach may exert selective effects on motivational and self‐efficacy‐related processes, rather than producing immediate, broad‐based improvements across all dimensions of emotional intelligence. By conceptualising GAI as a mediational learning tool that supports mastery experiences and reflective interaction, this study provides a theoretically grounded explanation of how GAI can support SEL and offers suggestions for the design of AI‐integrated instructional activities.\n\n"]