DOI:
https://doi.org/10.14483/23448393.19514Published:
2022-11-20Issue:
Vol. 28 No. 1 (2023): January-AprilSection:
Computational IntelligencePrediction of University-Level Academic Performance through Machine Learning Mechanisms and Supervised Methods
Predicción del rendimiento académico universitario mediante mecanismos de aprendizaje automático y métodos supervisados
Keywords:
análisis de datos educativos, Machine Learning, educación superior (es).Keywords:
educational data analysis, Machine Learning, higher education (en).Downloads
References
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