Predicting Learning Outcomes with MOOC Clickstreams

Massive Open Online Courses (MOOCs) have gradually become a dominant trend in education. Since 2014, the Ministry of Education in Taiwan has been promoting MOOC programs, with successful results. The ability of students to work at their own pace, however, is associated with low MOOC completion rates...

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Main Authors: Chen-Hsiang Yu, Jungpin Wu, An-Chi Liu
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Education Sciences
Subjects:
Online Access:https://www.mdpi.com/2227-7102/9/2/104
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spelling doaj-72cef49b16b1495587521c2778cf4b032020-11-24T21:28:00ZengMDPI AGEducation Sciences2227-71022019-05-019210410.3390/educsci9020104educsci9020104Predicting Learning Outcomes with MOOC ClickstreamsChen-Hsiang Yu0Jungpin Wu1An-Chi Liu2Department of Information Engineering and Computer Science, Feng Chia University, Taichung 40724, TaiwanDepartment. of Statistics, Feng Chia University, Taichung 40724, TaiwanDepartment of Information Engineering and Computer Science, Feng Chia University, Taichung 40724, TaiwanMassive Open Online Courses (MOOCs) have gradually become a dominant trend in education. Since 2014, the Ministry of Education in Taiwan has been promoting MOOC programs, with successful results. The ability of students to work at their own pace, however, is associated with low MOOC completion rates and has recently become a focus. The development of a mechanism to effectively improve course completion rates continues to be of great interest to both teachers and researchers. This study established a series of learning behaviors using the video clickstream records of students, through a MOOC platform, to identify seven types of cognitive participation models of learners. We subsequently built practical machine learning models by using K-nearest neighbor (KNN), support vector machines (SVM), and artificial neural network (ANN) algorithms to predict students’ learning outcomes via their learning behaviors. The ANN machine learning method had the highest prediction accuracy. Based on the prediction results, we saw a correlation between video viewing behavior and learning outcomes. This could allow teachers to help students needing extra support successfully pass the course. To further improve our method, we classified the course videos based on their content. There were three video categories: theoretical, experimental, and analytic. Different prediction models were built for each of these three video types and their combinations. We performed the accuracy verification; our experimental results showed that we could use only theoretical and experimental video data, instead of all three types of data, to generate prediction models without significant differences in prediction accuracy. In addition to data reduction in model generation, this could help teachers evaluate the effectiveness of course videos.https://www.mdpi.com/2227-7102/9/2/104learning and teachingMOOCsclickstreambehavior patternmachine learningN-gram
collection DOAJ
language English
format Article
sources DOAJ
author Chen-Hsiang Yu
Jungpin Wu
An-Chi Liu
spellingShingle Chen-Hsiang Yu
Jungpin Wu
An-Chi Liu
Predicting Learning Outcomes with MOOC Clickstreams
Education Sciences
learning and teaching
MOOCs
clickstream
behavior pattern
machine learning
N-gram
author_facet Chen-Hsiang Yu
Jungpin Wu
An-Chi Liu
author_sort Chen-Hsiang Yu
title Predicting Learning Outcomes with MOOC Clickstreams
title_short Predicting Learning Outcomes with MOOC Clickstreams
title_full Predicting Learning Outcomes with MOOC Clickstreams
title_fullStr Predicting Learning Outcomes with MOOC Clickstreams
title_full_unstemmed Predicting Learning Outcomes with MOOC Clickstreams
title_sort predicting learning outcomes with mooc clickstreams
publisher MDPI AG
series Education Sciences
issn 2227-7102
publishDate 2019-05-01
description Massive Open Online Courses (MOOCs) have gradually become a dominant trend in education. Since 2014, the Ministry of Education in Taiwan has been promoting MOOC programs, with successful results. The ability of students to work at their own pace, however, is associated with low MOOC completion rates and has recently become a focus. The development of a mechanism to effectively improve course completion rates continues to be of great interest to both teachers and researchers. This study established a series of learning behaviors using the video clickstream records of students, through a MOOC platform, to identify seven types of cognitive participation models of learners. We subsequently built practical machine learning models by using K-nearest neighbor (KNN), support vector machines (SVM), and artificial neural network (ANN) algorithms to predict students’ learning outcomes via their learning behaviors. The ANN machine learning method had the highest prediction accuracy. Based on the prediction results, we saw a correlation between video viewing behavior and learning outcomes. This could allow teachers to help students needing extra support successfully pass the course. To further improve our method, we classified the course videos based on their content. There were three video categories: theoretical, experimental, and analytic. Different prediction models were built for each of these three video types and their combinations. We performed the accuracy verification; our experimental results showed that we could use only theoretical and experimental video data, instead of all three types of data, to generate prediction models without significant differences in prediction accuracy. In addition to data reduction in model generation, this could help teachers evaluate the effectiveness of course videos.
topic learning and teaching
MOOCs
clickstream
behavior pattern
machine learning
N-gram
url https://www.mdpi.com/2227-7102/9/2/104
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