Prediction of the risk level of failure of higher education students using an artificial neural network model.

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Gisel Katerine Bastidas Guacho
Patricio Xavier Moreno Vallejo
María Elena Vallejo Sanaguano

Abstract

The desertion of undergraduate students and high academic failure rates is a problem in Ecuador's higher education institutions. If the failure rate in a subject is high, then the number of students who must retake the subject is also high. Therefore, it limits the available resources and makes the educational institutions' authorities constantly restructure physical spaces and teachers. On the other hand, educational data mining uses machine learning and deep learning techniques to analyze and model educational data to predict students' academic performance. Previous studies propose the use of different models of artificial neural networks to predict academic performance; however, these models focus on using only academic data and some students' sociodemographic data. On the contrary, in the present study, educational, sociodemographic, and economic data are considered, which were gathered through digital surveys and educational systems of a higher education institution, and a multi-layer perceptron network is proposed to predict the risk of failure of a student, which will allow students, teachers and authorities to know the risk of loss in a subject so that the corresponding actions can be taken to lower the failure rate. The proposed model reached an accuracy of approximately 88%, demonstrating good performance. Additionally, we compare the proposed model's performance with a decision tree's performance and a logistic regression model; these models obtained approximately 85% and 82% accuracy, respectively.

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How to Cite
Bastidas Guacho, G. K., Moreno Vallejo, P. X., & María Elena Vallejo Sanaguano. (2021). Prediction of the risk level of failure of higher education students using an artificial neural network model. ConcienciaDigital, 4(3.1), 95-104. https://doi.org/10.33262/concienciadigital.v4i3.1.1816
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