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https://accedacris.ulpgc.es/jspui/handle/10553/149404
Título: | Exploring Predictive Insights on Student Success Using Explainable Machine Learning: A Synthetic Data Study | Autores/as: | Santana Perera, Beatriz García-Barceló, Carmen González Arcas, Mauricio Gil, David |
Clasificación UNESCO: | 580101 Medios audiovisuales | Palabras clave: | Educational Data Explainable Ai Machine Learning Student Success |
Fecha de publicación: | 2025 | Publicación seriada: | Information (Switzerland) | Resumen: | Student success is a multifaceted outcome influenced by academic, behavioral, contextual, and socio-environmental factors. With the growing availability of educational data, machine learning (ML) offers promising tools to model complex, nonlinear relationships that go beyond traditional statistical methods. However, the lack of interpretability in many ML models remains a major obstacle for practical adoption in educational contexts. In this study, we apply explainable artificial intelligence (XAI) techniques—specifically SHAP (SHapley Additive exPlanations)—to analyze a synthetic dataset simulating diverse student profiles. Using LightGBM, we identify variables such as hours studied, attendance, and parental involvement as influential in predicting exam performance. While the results are not generalizable due to the artificial nature of the data, this study reframes its purpose as a methodological exploration rather than a claim of real-world actionable insights. Our findings demonstrate how interpretable ML can be used to build transparent analytic pipelines in education, setting the stage for future research using empirical datasets and real student data. | DOI: | 10.3390/info16090763 | Fuente: | Information (Switzerland) [EISSN 2078-2489], v. 16 (9), (Septiembre 2025) |
Colección: | Artículos |
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