Evaluation of e-learners’ concentration using recurrent neural networks

被引:0
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作者
Young-Sang Jeong
Nam-Wook Cho
机构
[1] Seoul National University of Science and Technology,Department of Data Science
[2] Seoul National University of Science and Technology,Department of Industrial Engineering
来源
关键词
E-learning; Concentration; E-learner; Recurrent neural networks (RNN); Gated recurrent units(GRU); Long short-term memory (LSTM);
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摘要
Recently, interest in e-learning has increased rapidly owing to the lockdowns imposed by COVID-19. A major disadvantage of e-learning is the difficulty in maintaining concentration because of the limited interaction between teachers and students. The objective of this paper is to develop a methodology to predict e-learners’ concentration by applying recurrent neural network models to eye gaze and facial landmark data extracted from e-learners’ video data. One hundred eighty-four video data of ninety-two e-learners were obtained, and their frame data were extracted using the OpenFace 2.0 toolkit. Recurrent neural networks, long short-term memory, and gated recurrent units were utilized to predict the concentration of e-learners. A set of comparative experiments was conducted. As a result, gated recurrent units exhibited the best performance. The main contribution of this paper is to present a methodology to predict e-learners’ concentration in a natural e-learning environment.
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页码:4146 / 4163
页数:17
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