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Rolf Ploetzner – Interactive Learning Environments, 2024
Interactive videos are frequently employed in education. Although several reviews and syntheses indicate that interactively engaging with videos might benefit learning, up until now no quantitative synthesis of the effectiveness of enhanced interaction features in educational videos has been published. Enhanced interaction features explicitly aim…
Descriptors: Interactive Video, Educational Technology, Active Learning, Instructional Effectiveness
Ethan P. McNaughton; Liam Bilbie; Matea Zuljevic; Lauren K. Allen; Daiana-Roxana Pur; Roy Eagleson; Sandrine Ribaupierre – Anatomical Sciences Education, 2025
In this article, we introduce a new virtual application that offers an interactive model of the brain for neuroanatomy education. Through a dual-platform architecture, the application can be downloaded on both desktop and mobile devices, with the mobile app leveraging unique capacities of modern handheld systems to deploy the brain model in…
Descriptors: Undergraduate Students, Anatomy, Brain, Science Instruction
Gülay Öztüre Yavuz; Gökhan Akçapinar; Hatice Çirali Sarica; Yasemin Koçak Usluel – Education and Information Technologies, 2024
This study aims to develop a predictive model for predicting gifted students' engagement levels and to investigate the features that are important in such predictions. Features reflecting students' emotions, social-emotional learning skills, learning approaches and video-watching behaviours were used in the prediction models. The study group…
Descriptors: Secondary School Students, Academically Gifted, Gifted Education, Learner Engagement