Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks

Although online learning platforms are gradually becoming commonplace in modern society, learners’ high dropout rates and serious academic performance require more attention within the virtual learning environment (VLE). This study aims to predict students’ performance in a specific course as it is...

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Main Authors: Yanbai He, Rui Chen, Xinya Li, Chuanyan Hao, Sijiang Liu, Gangyao Zhang, Bo Jiang
Format: Article
Language:English
Published: MDPI AG 2020-10-01
Series:Information
Subjects:
Online Access:https://www.mdpi.com/2078-2489/11/10/474
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spelling doaj-6f3a1ae8c1ff47ef84e397199e2300b92020-11-25T03:44:28ZengMDPI AGInformation2078-24892020-10-011147447410.3390/info11100474Online At-Risk Student Identification Using RNN-GRU Joint Neural NetworksYanbai He0Rui Chen1Xinya Li2Chuanyan Hao3Sijiang Liu4Gangyao Zhang5Bo Jiang6School of Computer Science, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Overseas Education, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Educational Science and Technology, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Educational Science and Technology, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Educational Science and Technology, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Educational Science and Technology, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaSchool of Educational Science and Technology, Nanjing University of Posts and Telecommunications, Nanjing 210023, ChinaAlthough online learning platforms are gradually becoming commonplace in modern society, learners’ high dropout rates and serious academic performance require more attention within the virtual learning environment (VLE). This study aims to predict students’ performance in a specific course as it is continuously running, using the statistic personal biographical information and sequential behavior data with VLE. To achieve this goal, a novel recurrent neural network (RNN)-gated recurrent unit (GRU) joint neural network is proposed to fit both static and sequential data, where the data completion mechanism is also adopted to fill the missing stream data. To incorporate the sequential relationship of learning data, three kinds of time-series deep neural network algorithms: simple RNN, GRU, and LSTM are first taken into consideration as baseline models. Their performances are compared in identifying at-risk students. Experimental results on Open University Learning Analytics Dataset (OULAD) show that simple methods like GRU and simple RNN have better results than the relatively complex LSTM model. The results also reveal that different models have different peak performance time, which results in the proposed joint model that achieves over 80% prediction accuracy of at-risk students at the end of the semester.https://www.mdpi.com/2078-2489/11/10/474recurrent neural network (RNN)performance predictionvirtual learning environment (VLE)binary classificationgated recurrent unit (GRU)long short-term memory (LSTM)
collection DOAJ
language English
format Article
sources DOAJ
author Yanbai He
Rui Chen
Xinya Li
Chuanyan Hao
Sijiang Liu
Gangyao Zhang
Bo Jiang
spellingShingle Yanbai He
Rui Chen
Xinya Li
Chuanyan Hao
Sijiang Liu
Gangyao Zhang
Bo Jiang
Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
Information
recurrent neural network (RNN)
performance prediction
virtual learning environment (VLE)
binary classification
gated recurrent unit (GRU)
long short-term memory (LSTM)
author_facet Yanbai He
Rui Chen
Xinya Li
Chuanyan Hao
Sijiang Liu
Gangyao Zhang
Bo Jiang
author_sort Yanbai He
title Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
title_short Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
title_full Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
title_fullStr Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
title_full_unstemmed Online At-Risk Student Identification Using RNN-GRU Joint Neural Networks
title_sort online at-risk student identification using rnn-gru joint neural networks
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2020-10-01
description Although online learning platforms are gradually becoming commonplace in modern society, learners’ high dropout rates and serious academic performance require more attention within the virtual learning environment (VLE). This study aims to predict students’ performance in a specific course as it is continuously running, using the statistic personal biographical information and sequential behavior data with VLE. To achieve this goal, a novel recurrent neural network (RNN)-gated recurrent unit (GRU) joint neural network is proposed to fit both static and sequential data, where the data completion mechanism is also adopted to fill the missing stream data. To incorporate the sequential relationship of learning data, three kinds of time-series deep neural network algorithms: simple RNN, GRU, and LSTM are first taken into consideration as baseline models. Their performances are compared in identifying at-risk students. Experimental results on Open University Learning Analytics Dataset (OULAD) show that simple methods like GRU and simple RNN have better results than the relatively complex LSTM model. The results also reveal that different models have different peak performance time, which results in the proposed joint model that achieves over 80% prediction accuracy of at-risk students at the end of the semester.
topic recurrent neural network (RNN)
performance prediction
virtual learning environment (VLE)
binary classification
gated recurrent unit (GRU)
long short-term memory (LSTM)
url https://www.mdpi.com/2078-2489/11/10/474
work_keys_str_mv AT yanbaihe onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT ruichen onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT xinyali onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT chuanyanhao onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT sijiangliu onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT gangyaozhang onlineatriskstudentidentificationusingrnngrujointneuralnetworks
AT bojiang onlineatriskstudentidentificationusingrnngrujointneuralnetworks
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