Predicting Java Computer Programming Task Difficulty Levels Using EEG for Educational Environments

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Abstract

Understanding how difficult a learning task is for a person allows teaching material to be appropriately designed to suit the person, especially for programming material. A first step for this would be to predict on the task difficulty level. While this is possible through subjective questionnaire, it could lead to misleading outcome and it would be better to do this by tapping the actual thought process in the brain while the subject is performing the task, which can be done using electroencephalogram. We set out on this objective and show that it is possible to predict easy and difficult levels of mental tasks when subjects are attempting to solve Java programming problems. Using a proposed confidence threshold, we obtained a classification performance of 87.05% thereby showing that it is possible to use brain data to determine the teaching material difficulty level which will be useful in educational environments.

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APA

Palaniappan, R., Duraisingam, A., Chinnaiah, N., & Murugappan, M. (2019). Predicting Java Computer Programming Task Difficulty Levels Using EEG for Educational Environments. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 11580 LNAI, pp. 446–460). Springer Verlag. https://doi.org/10.1007/978-3-030-22419-6_32

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