An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students

The rapid development of learning technologies has enabled online learning paradigm to gain great popularity in both high education and K-12, which makes the prediction of student performance become one of the most popular research topics in education. However, the traditional prediction algorithms...

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Main Authors: Xu Du, Juan Yang, Jui-Long Hung
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8952699/
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spelling doaj-388606fc2d03405e89183faa805ba18c2021-03-30T01:48:43ZengIEEEIEEE Access2169-35362020-01-018101101012210.1109/ACCESS.2020.29648458952699An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk StudentsXu Du0https://orcid.org/0000-0001-9069-6109Juan Yang1https://orcid.org/0000-0002-2004-8613Jui-Long Hung2https://orcid.org/0000-0002-7710-7231National Engineering Research Center for E-Learning, Central China Normal University, Wuhan, ChinaNational Engineering Research Center for E-Learning, Central China Normal University, Wuhan, ChinaDepartment of Educational Technology, Boise State University, Boise, ID, USAThe rapid development of learning technologies has enabled online learning paradigm to gain great popularity in both high education and K-12, which makes the prediction of student performance become one of the most popular research topics in education. However, the traditional prediction algorithms are originally designed for balanced dataset, while the educational dataset typically belongs to highly imbalanced dataset, which makes it more difficult to accurately identify the at-risk students. In order to solve this dilemma, this study proposes an integrated framework (LVAEPre) based on latent variational autoencoder (LVAE) with deep neural network (DNN) to alleviate the imbalanced distribution of educational dataset and further to provide early warning of at-risk students. Specifically, with the characteristics of educational data in mind, LVAE mainly aims to learn latent distribution of at-risk students and to generate at-risk samples for the purpose of obtaining a balanced dataset. DNN is to perform final performance prediction. Extensive experiments based on the collected K-12 dataset show that LVAEPre can effectively handle the imbalanced education dataset and provide much better and more stable prediction results than baseline methods in terms of accuracy and F<sub>1.5</sub> score. The comparison of t-SNE visualization results further confirms the advantage of LVAE in dealing with imbalanced issue in educational dataset. Finally, through the identification of the significant predictors of LVAEPre in the experimental dataset, some suggestions for designing pedagogical interventions are put forward.https://ieeexplore.ieee.org/document/8952699/Performance predictionearly warning predictionlatent variational autoencoderresampling methodsdeep neural networkt-SNE
collection DOAJ
language English
format Article
sources DOAJ
author Xu Du
Juan Yang
Jui-Long Hung
spellingShingle Xu Du
Juan Yang
Jui-Long Hung
An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
IEEE Access
Performance prediction
early warning prediction
latent variational autoencoder
resampling methods
deep neural network
t-SNE
author_facet Xu Du
Juan Yang
Jui-Long Hung
author_sort Xu Du
title An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
title_short An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
title_full An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
title_fullStr An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
title_full_unstemmed An Integrated Framework Based on Latent Variational Autoencoder for Providing Early Warning of At-Risk Students
title_sort integrated framework based on latent variational autoencoder for providing early warning of at-risk students
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description The rapid development of learning technologies has enabled online learning paradigm to gain great popularity in both high education and K-12, which makes the prediction of student performance become one of the most popular research topics in education. However, the traditional prediction algorithms are originally designed for balanced dataset, while the educational dataset typically belongs to highly imbalanced dataset, which makes it more difficult to accurately identify the at-risk students. In order to solve this dilemma, this study proposes an integrated framework (LVAEPre) based on latent variational autoencoder (LVAE) with deep neural network (DNN) to alleviate the imbalanced distribution of educational dataset and further to provide early warning of at-risk students. Specifically, with the characteristics of educational data in mind, LVAE mainly aims to learn latent distribution of at-risk students and to generate at-risk samples for the purpose of obtaining a balanced dataset. DNN is to perform final performance prediction. Extensive experiments based on the collected K-12 dataset show that LVAEPre can effectively handle the imbalanced education dataset and provide much better and more stable prediction results than baseline methods in terms of accuracy and F<sub>1.5</sub> score. The comparison of t-SNE visualization results further confirms the advantage of LVAE in dealing with imbalanced issue in educational dataset. Finally, through the identification of the significant predictors of LVAEPre in the experimental dataset, some suggestions for designing pedagogical interventions are put forward.
topic Performance prediction
early warning prediction
latent variational autoencoder
resampling methods
deep neural network
t-SNE
url https://ieeexplore.ieee.org/document/8952699/
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