Predicting Middle School Students' Academic Orientation Using SOM and Machine Learning Cover Image

Predicting Middle School Students' Academic Orientation Using SOM and Machine Learning
Predicting Middle School Students' Academic Orientation Using SOM and Machine Learning

Author(s): Charaf Tilioui, El Mehdi Bellfkih, Imrane Chems Eddine Idrissi, Khadija El Kababi, Mohamed Radid, Ghizlane Chemsi
Subject(s): Education, School education, Sociology of Education
Published by: Üniversite Park Ltd. Sti.
Keywords: Self-organizing maps; random forest; academic orientation; educational guidance; predictive analytics;

Summary/Abstract: Background/purpose. Middle school is a critical stage for shaping students' academic paths, but traditional orientation methods often fail to predict suitable trajectories, leading to mismatches that impede success. This study aims to develop a proactive, data-driven framework to forecast academic orientation for middle school students, enhancing tailored educational guidance. Materials/methods. The study utilized Self-Organizing Maps (SOM) and random forest prediction to analyze data from 720 Moroccan middle school students. In Phase One, survey responses (e.g., interest, selfefficacy) and math/science scores were clustered using a 7x7 SOM grid. In Phase Two, a random forest classifier (150 trees, max depth = 12) was trained on 70% of the data (504 students) with 17 features to predict orientation outcomes, validated with statistical tests (ANOVA, chi-square). Results. SOM identified five profiles: Cluster 1 had high math scores (Mean = 16.5) and 85% STEM preference; Cluster 3 had lower scores (Mean = 9.5) and 75% literary inclination with anxiety. Random forest achieved 93% training (F1 = 0.92), 89% test (AUC = 0.94), and 87% validated accuracy, predicting 57% scientific and 43% literary tracks. Self-efficacy and math scores predicted scientific paths; anxiety drove literary choices. Conclusion. This framework outperforms traditional methods, enabling early, personalized orientation. Despite some misclassification, counselor feedback (80% agreement) supports its utility. Future refinements could enhance accuracy and equity in student outcomes.

  • Issue Year: 17/2025
  • Issue No: 4
  • Page Range: 1-12
  • Page Count: 12
  • Language: English
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