Machine learning predicts upper secondary education dropout as early as the end of primary school

Abstract
Education plays a pivotal role in alleviating poverty, driving economic growth, and empowering individuals, thereby significantly influencing societal and personal development. However, the persistent issue of school dropout poses a significant challenge, with its effects extending beyond the individual. While previous research has employed machine learning for dropout classification, these studies often suffer from a short-term focus, relying on data collected only a few years into the study period. This study expanded the modeling horizon by utilizing a 13-year longitudinal dataset, encompassing data from kindergarten to Grade 9. Our methodology incorporated a comprehensive range of parameters, including students’ academic and cognitive skills, motivation, behavior, well-being, and officially recorded dropout data. The machine learning models developed in this study demonstrated notable classification ability, achieving a mean area under the curve (AUC) of 0.61 with data up to Grade 6 and an improved AUC of 0.65 with data up to Grade 9. Further data collection and independent correlational and causal analyses are crucial. In future iterations, such models may have the potential to proactively support educators’ processes and existing protocols for identifying at-risk students, thereby potentially aiding in the reinvention of student retention and success strategies and ultimately contributing to improved educational outcomes.
Main Authors
Format
Articles Research article
Published
2024
Series
Subjects
Publication in research information system
Publisher
Nature Publishing Group
The permanent address of the publication
https://urn.fi/URN:NBN:fi:jyu-202406064360Käytä tätä linkitykseen.
Review status
Peer reviewed
ISSN
2045-2322
DOI
https://doi.org/10.1038/s41598-024-63629-0
Language
English
Published in
Scientific Reports
Citation
  • Psyridou, M., Prezja, F., Torppa, M., Lerkkanen, M.-K., Poikkeus, A.-M., & Vasalampi, K. (2024). Machine learning predicts upper secondary education dropout as early as the end of primary school. Scientific Reports, 14, Article 12956. https://doi.org/10.1038/s41598-024-63629-0
License
CC BY 4.0Open Access
Funder(s)
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Research Council of Finland
Funding program(s)
Strategic research programmes, AoF
Research costs of Academy Research Fellow, AoF
Academy Research Fellow, AoF
Research costs of Academy Research Fellow, AoF
Strategic research programmes, AoF
Academy Project, AoF
Academy Project, AoF
Strategic research programmes, AoF
Academy Research Fellow, AoF
Research profiles, AoF
Postdoctoral Researcher, AoF
Strategic research programmes, AoF
Strategisen tutkimuksen ohjelmat STN, SA
Akatemiatutkijan tutkimuskulut, SA
Akatemiatutkija, SA
Akatemiatutkijan tutkimuskulut, SA
Strategisen tutkimuksen ohjelmat STN, SA
Akatemiahanke, SA
Akatemiahanke, SA
Strategisen tutkimuksen ohjelmat STN, SA
Akatemiatutkija, SA
Profilointi, SA
Tutkijatohtori, SA
Strategisen tutkimuksen ohjelmat STN, SA
Research Council of Finland
Additional information about funding
The First Steps Study was funded by by grants from the Academy of Finland (Grant numbers: 213486, 263891, 268586, 292466, 276239, 284439, and 313768). The School Path study was funded by grants from Academy of Finland (Grant numbers: 299506 and 323773).This research was also partly funded by the Strategic Research Council (SRC) established within the Academy of Finland (Grant numbers: 335625, 335727, 345196, 358490, and 358250 for the project CRITICAL and Grant numbers: 352648, 353392 for the project Right to Belong). In addition, Maria Psyridou was supported by the Academy of Finland (Grant number: 339418).
Copyright© The Author(s) 2024

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