Using Meta-Learning to predict student performance in virtual learning environments

被引:0
|
作者
Ángel Casado Hidalgo
Pablo Moreno Ger
Luis De La Fuente Valentín
机构
[1] Universidad Internacional de La Rioja,
来源
Applied Intelligence | 2022年 / 52卷
关键词
Meta-learning; Deep neural networks; Educational data mining; Learning analytics; Student performance;
D O I
暂无
中图分类号
学科分类号
摘要
Educational Data Science has meant an important advancement in the understanding and improvemen of learning models in recent years. One of the most relevant research topics is student performance prediction through click-stream activity in virtual learning environments, which provide abundant information about their behaviour during the course. This work explores the potential of Deep Learning and Meta-Learning in this field, which has thus far been explored very little, so that it can serve as a basis for future studies. We implemented a predictive model which is able to automatically optimise the architecture and hyperparameters of a deep neural network, taking as a use case an educational dataset that contains information from more than 500 students from an online university master’s degree. The results show that the performance of the autonomous model was similar to the traditionally designed one, which offers significant benefits in terms of efficiency and scalability. This also opens up interesting areas of research related to Meta-Learning applied to educational Big Data.
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页码:3352 / 3365
页数:13
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