Predicting students’ performance in e-learning using learning process and behaviour data

被引:0
作者
Feiyue Qiu
Guodao Zhang
Xin Sheng
Lei Jiang
Lijia Zhu
Qifeng Xiang
Bo Jiang
Ping-kuo Chen
机构
[1] Zhejiang University of Technology,College of Education
[2] Zhejiang University of Technology,College of Computer Science and Technology
[3] East China Normal University,Department of Educational Information Technology
[4] Shantou University,Business School and Research Institute for Guangdong
来源
Scientific Reports | / 12卷
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摘要
E-learning is achieved by the deep integration of modern education and information technology, and plays an important role in promoting educational equity. With the continuous expansion of user groups and application areas, it has become increasingly important to effectively ensure the quality of e-learning. Currently, one of the methods to ensure the quality of e-learning is to use mutually independent e-learning behaviour data to build a learning performance predictor to achieve real-time supervision and feedback during the learning process. However, this method ignores the inherent correlation between e-learning behaviours. Therefore, we propose the behaviour classification-based e-learning performance (BCEP) prediction framework, which selects the features of e-learning behaviours, uses feature fusion with behaviour data according to the behaviour classification model to obtain the category feature values of each type of behaviour, and finally builds a learning performance predictor based on machine learning. In addition, because existing e-learning behaviour classification methods do not fully consider the process of learning, we also propose an online behaviour classification model based on the e-learning process called the process-behaviour classification (PBC) model. Experimental results with the Open University Learning Analytics Dataset (OULAD) show that the learning performance predictor based on the BCEP prediction framework has a good prediction effect, and the performance of the PBC model in learning performance prediction is better than traditional classification methods. We construct an e-learning performance predictor from a new perspective and provide a new solution for the quantitative evaluation of e-learning classification methods.
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