An intelligent tool for early drop-out prediction of distance learning students

被引:0
|
作者
Choo Jun Tan
Ting Yee Lim
Teik Kooi Liew
Chee Peng Lim
机构
[1] Wawasan Open University,School of Science and Technology
[2] Peninsula College George Town,School of Technology
[3] HELP University,Deputy Vice Chancellor Office
[4] Deakin University,Institute for Intelligent Systems Research and Innovation
来源
Soft Computing | 2022年 / 26卷
关键词
Early drop-out detection; Classification; Evolutionary algorithm; Activity theory; Online learning;
D O I
暂无
中图分类号
学科分类号
摘要
Early identification of vulnerable students who are prone to drop-out is critical for devising effective educational retention strategies. Based on the Activity Theory, we undertake this challenge by considering students’ online activities as a useful predictor of their academic performance. Specifically, six artificial intelligence and related prediction models in individual and ensemble structures for tackling classification and multi-objective optimization tasks pertaining to early prediction of students’ performance are presented. A real database comprising online learning activities of 2544 students over 2 years in 84 science, engineering, and technology courses from an open distance education institution is used for evaluation. Comparing with other studies in the literature, the huge numbers of students and courses involved in this study pose a great challenge, due to increase in complexity of the problem and data dimensionality. The empirical results reveal statistically significant improvements of the ensemble-based models as compared with individual models in prediction of students’ performance. Implications of the results are analyzed and discussed from the Activity Theory perspective.
引用
收藏
页码:5901 / 5917
页数:16
相关论文
共 50 条
  • [21] The impact of students' conceptions of constructivist assumptions on academic achievement and drop-out
    Loyens, Sofie M. M.
    Rikers, Remy M. J. P.
    Schmidt, Henk G.
    STUDIES IN HIGHER EDUCATION, 2007, 32 (05) : 581 - 602
  • [22] COUNSELING TECHNIQUES WITH POTENTIAL DROP-OUT STUDENTS IN JUNIOR-COLLEGE
    KUNHART, WE
    ROLEDER, G
    JOURNAL OF COUNSELING PSYCHOLOGY, 1964, 11 (02) : 190 - 191
  • [23] Reducing the drop-out rates of at-risk high school students: The effective learning program (ELP)
    Nowicki, S
    Duke, MP
    Sisney, S
    Stricker, B
    Tyler, MA
    GENETIC SOCIAL AND GENERAL PSYCHOLOGY MONOGRAPHS, 2004, 130 (03): : 225 - 239
  • [24] Machine learning model for detecting high school students as candidates for drop-out from a study program
    Pasic, Dani
    Kucak, Danijel
    2020 43RD INTERNATIONAL CONVENTION ON INFORMATION, COMMUNICATION AND ELECTRONIC TECHNOLOGY (MIPRO 2020), 2020, : 1140 - 1144
  • [25] Drop-Out CH - Early School-Leaving and Absenteeism in Switzerland
    Stamm, Margrit
    Kost, Jakob
    Suter, Peter
    Holzinger-Neulinger, Melanie
    Safi, Netkey
    Stroezel, Holger
    ZEITSCHRIFT FUR PADAGOGIK, 2011, 57 (02): : 187 - 202
  • [26] Predictive instrument to measure the risk for early pregnancy and scholastic drop-out
    Rosales, E
    Burrows, R
    Diaz, M
    Muzzo, S
    PEDIATRIC RESEARCH, 1996, 39 (02) : 372 - 372
  • [27] Modification of Learning Ratio and Drop-Out for Stochastic Gradient Descendant Algorithm
    Teso-Fz-Betono, Adrian
    Zulueta, Ekaitz
    Cabezas-Olivenza, Mireya
    Fernandez-Gamiz, Unai
    Botana-M-Ibarreta, Carlos
    MATHEMATICS, 2023, 11 (05)
  • [28] Drop-out, stop-out or prolong? The effect of COVID-19 on students' choices
    Farcnik, Dasa
    Muren, Polona Domadenik
    Franca, Valentina
    INTERNATIONAL JOURNAL OF MANPOWER, 2022, 43 (07) : 1700 - 1718
  • [29] PAIRED-ASSOCIATE LEARNING MEDIATION VALUE AND DROP-OUT METHOD
    COHEN, RL
    MURRAY, A
    PSYCHOLOGICAL REPORTS, 1968, 23 (02) : 671 - &
  • [30] Predicting First-Year Computer Science Students Drop-Out with Machine Learning Methods: A Case Study
    Maksimova, Natalja
    Pentel, Avar
    Dunajeva, Olga
    EDUCATING ENGINEERS FOR FUTURE INDUSTRIAL REVOLUTIONS, ICL2020, VOL 2, 2021, 1329 : 719 - 726