Dropout Prediction in MOOCs: Using Deep Learning for Personalized Intervention

被引:168
作者
Xing, Wanli [1 ]
Du, Dongping [2 ]
机构
[1] Texas Tech Univ, Dept Educ Psychol & Leadership, Lubbock, TX 79409 USA
[2] Texas Tech Univ, Dept Ind Engn, Lubbock, TX 79409 USA
关键词
MOOCs; dropout prediction; deep learning; intervention; personalization; machine learning; PERFORMANCE; MACHINE; AREA;
D O I
10.1177/0735633118757015
中图分类号
G40 [教育学];
学科分类号
040101 ; 120403 ;
摘要
Massive open online courses (MOOCs) show great potential to transform traditional education through the Internet. However, the high attrition rates in MOOCs have often been cited as a scale-efficacy tradeoff. Traditional educational approaches are usually unable to identify such large-scale number of at-risk students in danger of dropping out in time to support effective intervention design. While building dropout prediction models using learning analytics are promising in informing intervention design for these at-risk students, results of the current prediction model construction methods do not enable personalized intervention for these students. In this study, we take an initial step to optimize the dropout prediction model performance toward intervention personalization for at-risk students in MOOCs. Specifically, based on a temporal prediction mechanism, this study proposes to use the deep learning algorithm to construct the dropout prediction model and further produce the predicted individual student dropout probability. By taking advantage of the power of deep learning, this approach not only constructs more accurate dropout prediction models compared with baseline algorithms but also comes up with an approach to personalize and prioritize intervention for at-risk students in MOOCs through using individual drop out probabilities. The findings from this study and implications are then discussed.
引用
收藏
页码:547 / 570
页数:24
相关论文
共 46 条
[1]  
Al-Shabandar R., 2017, 2017 INT JOINT C NEU
[2]  
[Anonymous], 2013, 7 Things You Should Know About Makerspaces
[3]  
Balakrishnan Eecs G., 2013, UCBEECS2013109, V2, P2
[4]  
Bouzayane S, 2017, PROCEEDINGS OF THE 50TH ANNUAL HAWAII INTERNATIONAL CONFERENCE ON SYSTEM SCIENCES, P124
[5]   Weekly Predicting the At-Risk MOOC Learners Using Dominance-Based Rough Set Approach [J].
Bouzayane, Sarra ;
Saad, Ines .
DIGITAL EDUCATION: OUT TO THE WORLD AND BACK TO THE CAMPUS, 2017, 10254 :160-169
[6]   Transfer Learning for Predictive Models in Massive Open Online Courses [J].
Boyer, Sebastien ;
Veeramachaneni, Kalyan .
ARTIFICIAL INTELLIGENCE IN EDUCATION, AIED 2015, 2015, 9112 :54-63
[7]   The use of the area under the roc curve in the evaluation of machine learning algorithms [J].
Bradley, AP .
PATTERN RECOGNITION, 1997, 30 (07) :1145-1159
[8]  
Chaplot D. S., 2015, 17 INT C ART INT ED
[9]  
Cobos R., 2017, FUTURELEARN WORKSH L, P1
[10]  
Cristianini N., 2000, An Introduction to Support Vector Machines and Other Kernel-Based Learning Methods, DOI DOI 10.1017/CBO9780511801389