Digital, Vol. 5, Pages 45: Emotion-Aware Education Through Affective Computing and Learning Analytics: Insights from a Moroccan University Case Study


Digital, Vol. 5, Pages 45: Emotion-Aware Education Through Affective Computing and Learning Analytics: Insights from a Moroccan University Case Study

Digital doi: 10.3390/digital5030045

Authors:
Nisserine El Bahri
Zakaria Itahriouan
Mohammed Ouazzani Jamil

In a world where artificial intelligence is constantly changing education, taking students’ feelings into account is a crucial framework for enhancing their engagement and academic performance. This article presents LearnerEmotions, an online application that employs machine vision technology to determine how learners are feeling in real time through their facial expressions. Teachers and institutions can access analytical dashboards and monitor students’ emotions with this tool, which is designed for use in both in-person and remote classes. The facial expression recognition model used in this application achieved an average accuracy of 0.91 and a loss of 0.3 in the real environment. More than 9 million emotional data points were gathered from an experiment involving 65 computer engineering students, and these insights were correlated with attendance and academic performance. While negative emotions like anger, sadness, and fear are associated with decreased performance and lower attendance, the statistical study shows a strong correlation between positive feelings like surprise and joy and successful academic performance. These results underline the necessity of technological tools that offer immediate pedagogical regulation and support the notion that emotions play an important role in the learning process. Thus, LearnerEmotions, which considers students’ emotional states, is a potential first step toward more adaptive learning.



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Nisserine El Bahri www.mdpi.com