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  4. Evaluation of early student performance prediction given concept drift
 
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2025
Journal Article
Title

Evaluation of early student performance prediction given concept drift

Abstract
Forecasting student performance can help to identify students at risk and aids in recommending actions to improve their learning outcomes. That often involves elaborate machine learning pipelines. These tend to use large feature sets including behavioral data from learning management systems or demographic information. However, this complexity can lead to inaccurate predictions when concept drift occurs, or when a large number of features are used with a limited sample size. We investigate the performance of different machine learning pipelines on a data set with change in study behavior during the Covid-19 period. We demonstrate that (i) LASSO, a shrinkage estimator that reduces complexity and overfitting, outperforms several machine learning models under these circumstances, (ii) a linear regression relying on only two handcrafted features achieves higher accuracy and substantially less predictive bias than commonly used, more complex models with large feature sets. Due to their simplicity, these models can serve as a benchmark for future studies and a fallback model when substantial concept or covariate drift is encountered.
Author(s)
Sonnleitner, Benedikt  
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Madou, Tom
Hogeschool VIVES
Deceuninck, Matthias
Hogeschool VIVES
Theodosiou, Filotas
Hogeschool VIVES
Sagaert, Yves R.
Hogeschool VIVES
Journal
Computers and education. Artificial intelligence  
DOI
10.1016/j.caeai.2025.100369
Language
English
Fraunhofer-Institut für Integrierte Schaltungen IIS  
Keyword(s)
  • Data science applications in education

  • Distance education and online learning

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