Human vs Machine Learning: Best Approach to Early Detect University Dropout Rates
Date
2025-07-15Author
Estado
info:eu-repo/semantics/publishedVersionMetadata
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. .The high student dropout rates and academic failuresin Spanish higher
education institutions have been a persistent issue. Spain is among the European
Union countries with the worst dropout rates, with recent data from the University Ministry indicating a 33.2% dropout rate in the 2022–2023 academic year.
The multifaceted nature of dropout factors includes low academic performance,
poor social support, low socio-economic status, pessimism, and lack of motivation. Despite efforts to address these issues, dropout rates remain high, necessitating more effective solutions. This study employs a longitudinal design to test
the alignment of tutors’ and students’ perceptions with machine learning predictions. The analysissuggeststhat a combined approach, integrating human insights
and machine learning, enhances predictive accuracy. The findings highlight the
critical role of human judgment in capturing qualitative aspects that data-driven
models might miss, advocating for a synergistic approach to improve educational
outcomes.
Human vs Machine Learning: Best Approach to Early Detect University Dropout Rates
Tipo de Actividad
Capítulos en librosPalabras Clave
..Higher Education · Early Dropout · Machine Learning · Prediction · Tutoring · First-year Student

