A Systematic Literature Review of Student' Performance Prediction Using Machine Learning Techniques

被引:127
作者
Albreiki, Balqis [1 ,2 ]
Zaki, Nazar [1 ,2 ]
Alashwal, Hany [1 ,2 ]
机构
[1] United Arab Emirates Univ, Coll Informat Technol, Dept Comp Sci & Software Engn, Al Ain 15551, U Arab Emirates
[2] United Arab Emirates Univ, Big Data Analyt Ctr, Al Ain 15551, U Arab Emirates
关键词
education data mining; machine learning; MOOC; student performance; prediction; classification; DROPOUT PREDICTION; COURSES; GUIDE;
D O I
10.3390/educsci11090552
中图分类号
G40 [教育学];
学科分类号
040101 ; 120403 ;
摘要
Educational Data Mining plays a critical role in advancing the learning environment by contributing state-of-the-art methods, techniques, and applications. The recent development provides valuable tools for understanding the student learning environment by exploring and utilizing educational data using machine learning and data mining techniques. Modern academic institutions operate in a highly competitive and complex environment. Analyzing performance, providing high-quality education, strategies for evaluating the students' performance, and future actions are among the prevailing challenges universities face. Student intervention plans must be implemented in these universities to overcome problems experienced by the students during their studies. In this systematic review, the relevant EDM literature related to identifying student dropouts and students at risk from 2009 to 2021 is reviewed. The review results indicated that various Machine Learning (ML) techniques are used to understand and overcome the underlying challenges; predicting students at risk and students drop out prediction. Moreover, most studies use two types of datasets: data from student colleges/university databases and online learning platforms. ML methods were confirmed to play essential roles in predicting students at risk and dropout rates, thus improving the students' performance.
引用
收藏
页数:27
相关论文
共 87 条
[81]   Dropout Prediction in MOOCs: Using Deep Learning for Personalized Intervention [J].
Xing, Wanli ;
Du, Dongping .
JOURNAL OF EDUCATIONAL COMPUTING RESEARCH, 2019, 57 (03) :547-570
[82]   Temporal predication of dropouts in MOOCs: Reaching the low hanging fruit through stacking generalization [J].
Xing, Wanli ;
Chen, Xin ;
Stein, Jared ;
Marcinkowski, Michael .
COMPUTERS IN HUMAN BEHAVIOR, 2016, 58 :119-129
[83]   A Machine Learning Approach for Tracking and Predicting Student Performance in Degree Programs [J].
Xu, Jie ;
Moon, Kyeong Ho ;
van der Schaar, Mihaela .
IEEE JOURNAL OF SELECTED TOPICS IN SIGNAL PROCESSING, 2017, 11 (05) :742-753
[84]  
Ye C., 2014, Journal of Learning Analytics, V1, P169, DOI [DOI 10.18608/JLA.2014.13.14, 10.18608/jla.2014.13.14]
[85]  
Zaffar M, 2018, INT J ADV COMPUT SC, V9, P541
[86]  
Zeineddine Hassan, 2021, Computers & Electrical Engineering, V89, DOI 10.1016/j.compeleceng.2020.106903
[87]  
Zhang W., P INT S ED TECHN ISE