How the Predictors of Math Achievement Change Over Time: A Longitudinal Machine Learning Approach

被引:0
作者
Lavelle-Hill, Rosa [1 ,2 ,3 ]
Frenzel, Anne C. [4 ]
Goetz, Thomas [5 ]
Lichtenfeld, Stephanie [6 ]
Marsh, Herbert W. [7 ]
Pekrun, Reinhard [4 ,7 ,8 ]
Sakaki, Michiko [1 ,9 ]
Smith, Gavin [10 ]
Murayama, Kou [1 ,9 ]
机构
[1] Univ Tubingen, Hector Res Inst Educ Sci & Psychol, Tubingen, Germany
[2] Univ Copenhagen, Dept Psychol, Oster Farimagsgade 2A, DK-1353 Copenhagen, Denmark
[3] Copenhagen Ctr Social Data Sci SODAS, Oster Farimagsgade 2A, DK-1353 Copenhagen, Denmark
[4] Univ Essex, Dept Psychol, Essex, England
[5] Univ Vienna, Fac Psychol, Dept Dev & Educ Psychol, Vienna, Austria
[6] Univ Hamburg, Fac Educ, Educ Psychol, Hamburg, Germany
[7] Australian Catholic Univ, Inst Posit Psychol & Educ, Sydney, Australia
[8] Ludwig Maximilians Univ Munchen, Dept Psychol, Munich, Germany
[9] Kochi Univ Technol, Res Inst, Kami, Japan
[10] Univ Nottingham, Business Sch, N LAB, Nottingham, England
关键词
mathematics; student achievement; longitudinal survey data; machine learning; explainable artificial intelligence; MATHEMATICS ACHIEVEMENT; INTELLIGENCE; MOTIVATION; IMPUTATION; QUALITY; MODELS; GRADES; PANEL;
D O I
10.1037/edu0000863
中图分类号
G44 [教育心理学];
学科分类号
0402 ; 040202 ;
摘要
Researchers have focused extensively on understanding the factors influencing students' academic achievement over time. However, existing longitudinal studies have often examined only a limited number of predictors at one time, leaving gaps in our knowledge about how these predictors collectively contribute to achievement beyond prior performance and how their impact evolves during students' development. To address this, we employed machine learning to analyze longitudinal survey data from 3,425 German secondary school students spanning 5 to 9 years. Our objectives were twofold: to model and compare the predictive capabilities of 105 predictors on math achievement and to track changes in their importance over time. We first predicted standardized math achievement scores in Years 6-9 using the variables assessed in the previous year ("next year prediction"). Second, we examined the utility of the variables assessed in Year 5 at predicting future math achievement at varying time lags (1-4 years ahead)-"varying lag prediction." In the next year prediction analysis, prior math achievement was the strongest predictor, gaining importance over time. In the varying lag prediction analysis, the predictive power of Year 5 math achievement waned with longer time lags. In both analyses, additional predictors, including intelligence quotient, grades, motivation and emotion, cognitive strategies, classroom/home environments, and demographics (including socioeconomic status), exhibited relatively smaller yet consistent contributions, underscoring their distinct roles in predicting math achievement over time. The findings have implications for both future research and educational practices, which are discussed in detail.
引用
收藏
页码:1383 / 1403
页数:21
相关论文
共 115 条
  • [1] Investigating the predictive roles of working memory and IQ in academic attainment
    Alloway, Tracy Packiam
    Alloway, Ross G.
    [J]. JOURNAL OF EXPERIMENTAL CHILD PSYCHOLOGY, 2010, 106 (01) : 20 - 29
  • [2] Permutation importance: a corrected feature importance measure
    Altmann, Andre
    Tolosi, Laura
    Sander, Oliver
    Lengauer, Thomas
    [J]. BIOINFORMATICS, 2010, 26 (10) : 1340 - 1347
  • [3] [Anonymous], 2023, CIVITAS
  • [4] [Anonymous], 2012, Journal of asynchronous learning networks, DOI DOI 10.24059/OLJ.V16I3.267
  • [5] Self-Concept and Self-Efficacy in Math: Longitudinal Interrelations and Reciprocal Linkages with Achievement
    Arens, A. Katrin
    Frenzel, Anne C.
    Goetz, Thomas
    [J]. JOURNAL OF EXPERIMENTAL EDUCATION, 2022, 90 (03) : 615 - 633
  • [6] Math Self-Concept, Grades, and Achievement Test Scores: Long-Term Reciprocal Effects Across Five Waves and Three Achievement Tracks
    Arens, A. Katrin
    Marsh, Herbert W.
    Pekrun, Reinhard
    Lichtenfeld, Stephanie
    Murayama, Kou
    vom Hofe, Rudolf
    [J]. JOURNAL OF EDUCATIONAL PSYCHOLOGY, 2017, 109 (05) : 621 - 634
  • [7] Grouped feature importance and combined features effect plot
    Au, Quay
    Herbinger, Julia
    Stachl, Clemens
    Bischl, Bernd
    Casalicchio, Giuseppe
    [J]. DATA MINING AND KNOWLEDGE DISCOVERY, 2022, 36 (04) : 1401 - 1450
  • [8] What you see may not be what you get: A brief, nontechnical introduction to overfitting in regression-type models
    Babyak, MA
    [J]. PSYCHOSOMATIC MEDICINE, 2004, 66 (03): : 411 - 421
  • [9] State and Trait Effects on Individual Differences in Children's Mathematical Development
    Bailey, Drew H.
    Watts, Tyler W.
    Littlefield, Andrew K.
    Geary, David C.
    [J]. PSYCHOLOGICAL SCIENCE, 2014, 25 (11) : 2017 - 2026
  • [10] Baker R.S., 2009, Journal of Educational Data Mining, V1, P3, DOI DOI 10.5281/ZENODO.3554657