Prediction of Dilatory Behavior in eLearning: A Comparison of Multiple Machine Learning Models

被引:3
|
作者
Imhof, Christof [1 ]
Comsa, Ioan-Sorin [1 ]
Hlosta, Martin [1 ]
Parsaeifard, Behnam [1 ]
Moser, Ivan [1 ]
Bergamin, Per [1 ,2 ]
机构
[1] Swiss Distance Univ Appl Sci, Inst Res Open Distance & eLearning, CH-3900 Brig, Switzerland
[2] North West Univ, ZA-2531 Potchefstroom, South Africa
来源
关键词
Dilatory behavior; learning analytics (LA); machine learning (ML); predictive performance; procrastination; Delays; Predictive models; Behavioral sciences; Prediction algorithms; Task analysis; Data models; Classification algorithms; ACTIVE PROCRASTINATION; VALIDATION;
D O I
10.1109/TLT.2022.3221495
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Procrastination, the irrational delay of tasks, is a common occurrence in online learning. Potential negative consequences include a higher risk of drop-outs, increased stress, and reduced mood. Due to the rise of learning management systems (LMS) and learning analytics (LA), indicators of such behavior can be detected, enabling predictions of future procrastination and other dilatory behavior. However, research focusing on such predictions is scarce. Moreover, studies involving different types of predictors and comparisons between the predictive performance of various methods are virtually nonexistent. In this article, we aim to fill these research gaps by analyzing the performance of multiple machine learning algorithms when predicting the delayed or timely submission of online assignments in a higher education setting with two categories of predictors: 1) subjective, questionnaire-based variables and 2) objective, log-data-based indicators extracted from a learning management system. The results show that models with objective predictors consistently outperform models with subjective predictors, and a combination of both variable types performs slightly better with an accuracy of 70%. For each of these three options, a different approach prevailed (gradient boosting machines for the subjective, Bayesian multilevel models for the objective, and Random Forest for the combined predictors). We conclude that careful attention should be paid to the selection of predictors and algorithms before implementing such models in learning management systems.
引用
收藏
页码:648 / 663
页数:16
相关论文
共 50 条
  • [31] Tissue outcome prediction in hyperacute ischemic stroke: Comparison of machine learning models
    Benzakoun, Joseph
    Charron, Sylvain
    Turc, Guillaume
    Hassen, Wagih Ben
    Legrand, Laurence
    Boulouis, Gregoire
    Naggara, Olivier
    Baron, Jean-Claude
    Thirion, Bertrand
    Oppenheim, Catherine
    JOURNAL OF CEREBRAL BLOOD FLOW AND METABOLISM, 2021, 41 (11): : 3085 - 3096
  • [32] Explainable artificial intelligence for stroke prediction through comparison of deep learning and machine learning models
    Moulaei, Khadijeh
    Afshari, Lida
    Moulaei, Reza
    Sabet, Babak
    Mousavi, Seyed Mohammad
    Afrash, Mohammad Reza
    SCIENTIFIC REPORTS, 2024, 14 (01):
  • [33] Prediction of gasoline research octane number using multiple feature machine learning models
    Sun, Xingyu
    Zhang, Fan
    Liu, Jingping
    Duan, Xiongbo
    FUEL, 2023, 333
  • [34] The value of multiple data sources in machine learning models for power system event prediction
    Hoffmann, Volker
    Klemets, Jonatan Ralf Axel
    Torsaeter, Bendik Nybakk
    Rosenlund, Gjert H.
    Andresen, Christian A.
    2021 INTERNATIONAL CONFERENCE ON SMART ENERGY SYSTEMS AND TECHNOLOGIES (SEST), 2021,
  • [35] Comprehensive Evaluation of Bankruptcy Prediction in Taiwanese Firms Using Multiple Machine Learning Models
    Pham, Hung, V
    Chu, Tuan
    Le, Tuan M.
    Tran, Hieu M.
    Tran, Huong T. K.
    Yen, Khanh N.
    Dao, Son V. T.
    INTERNATIONAL JOURNAL OF TECHNOLOGY, 2025, 16 (01) : 289 - 309
  • [36] Comprehensive accurate prediction of critical jet fuel properties with multiple machine learning models
    Shao, Yitong
    Yu, Mengxian
    Zhao, Mengchao
    Xue, Kang
    Zhang, Xiangwen
    Zou, Ji-Jun
    Pan, Lun
    CHEMICAL ENGINEERING SCIENCE, 2025, 304
  • [37] Empirical Evaluation of Machine Learning Models for Fuel Consumption, Driver Identification, and Behavior Prediction
    Maktoubian, Jamal
    Tran, Son N.
    Shillabeer, Anna
    Amin, Muhammad Bilal
    Sambrooks, Lawrence
    Khoshkangini, Reza
    IEEE TRANSACTIONS ON INTELLIGENT TRANSPORTATION SYSTEMS, 2024, : 19156 - 19175
  • [38] Fluid Flow Behavior Prediction in Naturally Fractured Reservoirs Using Machine Learning Models
    Shawkat, Mustafa Mudhafar
    Risal, Abdul Rahim Bin
    Mahdi, Noor J.
    Safari, Ziauddin
    Naser, Maryam H.
    Al Zand, Ahmed W.
    COMPLEXITY, 2023, 2023
  • [39] From Play to Prediction: Assessing Depression and Anxiety in Players Behavior with Machine Learning Models
    Elyasi, Soroush
    Varastehnezhad, Arya
    Taghiyareh, Fattaneh
    INTERNATIONAL JOURNAL OF SERIOUS GAMES, 2025, 12 (01): : 83 - 102
  • [40] Thermogravimetric experiments based prediction of biomass pyrolysis behavior: A comparison of typical machine learning regression models in Scikit-learn
    Zhong, Yu
    Liu, Fahang
    Huang, Guozhe
    Zhang, Juan
    Li, Changhai
    Ding, Yanming
    MARINE POLLUTION BULLETIN, 2024, 202