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EEG-Based Tool for Prediction of University Students' Cognitive Performance in the Classroom.

Mauricio A Ramírez-MorenoMariana Díaz-PadillaKarla D Valenzuela-GómezAdriana Vargas MartínezJuan Carlos Tudon-MartinezRubén Morales-MenendezRicardo A Ramirez MendozaBlas L Pérez-HenríquezJorge de-J Lozoya-Santos
Published in: Brain sciences (2021)
This study presents a neuroengineering-based machine learning tool developed to predict students' performance under different learning modalities. Neuroengineering tools are used to predict the learning performance obtained through two different modalities: text and video. Electroencephalographic signals were recorded in the two groups during learning tasks, and performance was evaluated with tests. The results show the video group obtained a better performance than the text group. A correlation analysis was implemented to find the most relevant features to predict students' performance, and to design the machine learning tool. This analysis showed a negative correlation between students' performance and the (theta/alpha) ratio, and delta power, which are indicative of mental fatigue and drowsiness, respectively. These results indicate that users in a non-fatigued and well-rested state performed better during learning tasks. The designed tool obtained 85% precision at predicting learning performance, as well as correctly identifying the video group as the most efficient modality.
Keyphrases
  • machine learning
  • working memory
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  • mental health
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  • physical activity
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  • resting state
  • high density