2023
DOI: 10.4108/eetsis.vi.3455
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Classification model for student dropouts using machine learning: A case study

Henry Villarreal-Torres,
Julio Ángeles-Morales,
William Marín-Rodriguez
et al.

Abstract: Information and communication technologies have been fulfilling a highly relevant role in the different fields of knowledge, addressing problems in various disciplines; there is an increased capacity to identify patterns and anomalies in an organization's data using data mining; In this context, the study aimed to develop a classification model for student dropout, applying machine learning with the autoML method of the H2O.ai framework; the dimensionality of the socioeconomic and academic characteristics has … Show more

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