Identificador persistente para citar o vincular este elemento: https://accedacris.ulpgc.es/jspui/handle/10553/169892
Título: AIGC-enhanced learning analytics in film education: a decision-making framework for creative pedagogy in Chinese higher education
Autores/as: Tang, Chao
Wang, Lili 
Clasificación UNESCO: 5701 Lingüística aplicada
5802 Organización y planificación de la educación
Palabras clave: Learning analytics
Educational decision-making
AI-enhanced learning design
Data-driven education
Creative higher education
Fecha de publicación: 2026
Publicación seriada: International Journal of Educational Technology in Higher Education 
Resumen: The integration of learning analytics with artificial intelligence represents a paradigm shift in educational decision-making, yet systematic frameworks for AI-enhanced learning design remain critically underexplored in creative higher education contexts where ethical considerations are paramount. Despite growing interest in AI-enhanced education, existing approaches lack systematic integration of learning analytics with ethical frameworks for evidence-based educational interventions in arts-based disciplines. This study develops and validates the Learning Analytics-driven Educational Decision-Making (LA-EDM) Framework, a comprehensive approach for AI-enhanced learning design through data-informed educational decision-making in creative education. A sequential mixed-methods design incorporated quantitative analysis of learning analytics data from 508 Chinese film students, qualitative interviews with 10 film educators, and systematic assessment of 10 student films. Structural equation modeling demonstrated strong model fit ( /df=2.677, CFI=0.949), with mediation analysis revealing significant pathway relationships. The LA-EDM Framework demonstrates robust predictive validity, explaining substantial outcome variance (R =30.6%−35.7%) in learning design effectiveness. Key findings reveal that Ethical Fitness significantly predicts successful AI integration ( =0.262 for technical-artistic balance) and indirectly influences Educational Effectiveness through Technical-Artistic Balance, with this pathway accounting for 19.834% of the total effect. Qualitative analysis identifies critical dialectical tensions including empowerment versus deskilling dynamics and efficiency versus creative depth considerations. This research extends learning analytics theory by providing the first empirically validated framework integrating ethical considerations with data-driven educational decision-making in creative disciplines. The findings offer evidence-based guidance for educators implementing AI-enhanced learning design in arts education, demonstrating how learning analytics can inform personalized and ethically-grounded pedagogical interventions.
URI: https://accedacris.ulpgc.es/jspui/handle/10553/169892
ISSN: 2365-9440
Fuente: International Journal of Educational Technology in Higher Education [ISSN 2365-9440], (23), p. 27-0
URL: https://dialnet.unirioja.es/servlet/articulo?codigo=10766143
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