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Early dropout predictors in social sciences and management degree students

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202310595047472_Early dropout predictors in social.pdf (1.810Mb)
Date
2023-09-29
Author
Ortiz Lozano, José María
Aparicio Chueca, Pilar
Triadó Ivern, Xavier M.
Arroyo Barrigüete, José Luis
Estado
info:eu-repo/semantics/publishedVersion
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Abstract
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Student dropout is a major concern in studies investigating retention strategies in higher education. This study identifies which variables are important to predict student dropout, using academic data from 3583 first-year students on the Business Administration (BA) degree at the University of Barcelona (Spain). The results indicate that two variables, the percentage of subjects failed and not attended in the first semester, demonstrate significant predictive power. This has been corroborated with an additional sample of 10,784 students from three-degree programs (Law, BA, and Economics) at the Complutense University of Madrid (Spain), to assess the robustness of the results. Three different algorithms have also been utilized: neural networks, random forest, and logit. In the specific case of neural networks, the NeuralSens methodology has been employed, which is based on the use of sensitivities, allowing for its interpretation. The outcomes are highly consistent in all cases: both a simple model (logit) and more sophisticated ones (neural networks and random forest) exhibit high accuracy (correctly predicted values) and sensitivity (correctly predicted dropouts). In test set average values of 77% and 69% have been respectively achieved. In this regard, a noteworthy point is that only academic data from the university itself was used to develop the models. This ensures that there’s no dependence on other personal or organizational variables, which can often be difficult to access.
 
URI
https://doi.org/10.1080/03075079.2023.2264343
Early dropout predictors in social sciences and management degree students
Tipo de Actividad
Artículos en revistas
ISSN
0307-5079
Materias/ categorías / ODS
Innovación docente y Analytics (GIIDA)
Palabras Clave
.
Prediction; university dropout; educational data mining; academic performance; neural networks
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