Scientific journal paper Q1
A data-driven approach to predict first-year students’ academic success in higher education institutions
Paulo Diniz Gil (Gil, P. D.); Susana da Cruz Martins (Martins, S. C.); Sérgio Moro (Moro, S.); Joana Martinho Costa (Costa, J. M.);
Journal Title
Education and Information Technologies
Year (definitive publication)
2021
Language
English
Country
United States of America
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Abstract
This study presents a data mining approach to predict academic success of the first-year students. A dataset of 10 academic years for first-year bachelor’s degrees from a Portuguese Higher Institution (N = 9652) has been analysed. Features’ selection resulted in a characterising set of 68 features, encompassing socio-demographic, social origin, previous education, special statutes and educational path dimensions. We proposed and tested three distinct course stage data models based on entrance date, end of the first and second curricular semesters. A support vector machines (SVM) model achieved the best overall performance and was selected to conduct a data-based sensitivity analysis. The previous evaluation performance, study gaps and age-related features play a major role in explaining failures at entrance stage. For subsequent stages, current evaluation performance features unveil their predictive power. Suggested guidelines include to provide study support groups to risk profiles and to create monitoring frameworks. From a practical standpoint, a data-driven decision-making framework based on these models can be used to promote academic success.
Acknowledgements
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Keywords
Academic success,Data mining,Higher education,Modelling,SVM,Sensitivity analysis
  • Computer and Information Sciences - Natural Sciences
  • Educational Sciences - Social Sciences
Funding Records
Funding Reference Funding Entity
UIDB/04466/2020 Fundação para a Ciência e a Tecnologia
UIDP/04466/2020 Fundação para a Ciência e a Tecnologia

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