Abstract

While the use of deep neural networks is popular for predicting students’ learning outcomes, convolutional neural network (CNN)-based methods are used more often. Such methods require numerous features, training data, or multiple models to achieve week-by-week predictions. However, many current learning management systems (LMSs) operated by colleges cannot provide adequate information. To make the system more feasible, this article proposes a recurrent neural network (RNN)-based framework to identify at-risk students who might fail the course using only a few common learning features. RNN-based methods can be more effective than CNN-based methods in identifying at-risk students due to their ability to memorize time-series features. The data used in this study were collected from an online course that teaches artificial intelligence (AI) at a university in northern Taiwan. Common features, such as the number of logins, number of posts and number of homework assignments submitted, are considered to train the model. This study compares the prediction results of the RNN model with the following conventional machine learning models: logistic regression, support vector machines, decision trees and random forests. This work also compares the performance of the RNN model with two neural network-based models: the multi-layer perceptron (MLP) and a CNN-based model. The experimental results demonstrate that the RNN model used in this study is better than conventional machine learning models and the MLP in terms of F-score, while achieving similar performance to the CNN-based model with fewer parameters. Our study shows that the designed RNN model can identify at-risk students once one-third of the semester has passed. Some future directions are also discussed.

Highlights

  • The impact of COVID-19 has led to discussions in the field of information and communications technology (ICT) about the need for more schools to provide online programs, allowing students to learn in flexible and diversified ways

  • The remaining data were used to train the recurrent neural network (RNN) model, which was used to predict the probability of failure in the class each week

  • Various systematic analyses of the early warning system (EWS) for online learning are supported by deep learning techniques

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Summary

Introduction

The impact of COVID-19 has led to discussions in the field of information and communications technology (ICT) about the need for more schools to provide online programs, allowing students to learn in flexible and diversified ways. In addition to existing massive open online courses (MOOCs), many online platforms have begun to appear on the market. In these contexts, instructors may have limited information that can be helpful in detecting student attrition due to the lack of face-to-face interactions [1]. Digital data may provide more useful and higher quality information compared to data collected through other, more traditional methods [4]. Such data from learning analytics could be used to help researchers provide suggestions for improving the learning experience.

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