Abstract

The present work proposes the application of machine learning techniques to predict the final grades (FGs) of students based on their historical performance of grades. The proposal was applied to the historical academic information available for students enrolled in the computer engineering degree at an Ecuadorian university. One of the aims of the university’s strategic plan is the development of a quality education that is intimately linked with sustainable development goals (SDGs). The application of technology in teaching–learning processes (Technology-enhanced learning) must become a key element to achieve the objective of academic quality and, as a consequence, enhance or benefit the common good. Today, both virtual and face-to-face educational models promote the application of information and communication technologies (ICT) in both teaching–learning processes and academic management processes. This implementation has generated an overload of data that needs to be processed properly in order to transform it into valuable information useful for all those involved in the field of education. Predicting a student’s performance from their historical grades is one of the most popular applications of educational data mining and, therefore, it has become a valuable source of information that has been used for different purposes. Nevertheless, several studies related to the prediction of academic grades have been developed exclusively for the benefit of teachers and educational administrators. Little or nothing has been done to show the results of the prediction of the grades to the students. Consequently, there is very little research related to solutions that help students make decisions based on their own historical grades. This paper proposes a methodology in which the process of data collection and pre-processing is initially carried out, and then in a second stage, the grouping of students with similar patterns of academic performance was carried out. In the next phase, based on the identified patterns, the most appropriate supervised learning algorithm was selected, and then the experimental process was carried out. Finally, the results were presented and analyzed. The results showed the effectiveness of machine learning techniques to predict the performance of students.

Highlights

  • Quality education is one of the Sustainable Development Goals (SDGs) approved by the United Nations forum in 2015 [1] and is a fundamental challenge to support sustainable development worldwide

  • It is proposed to carry out predictive analysis of the final grades (FGs) of computer engineering students that will support the processes of academic quality and mitigate the student dropout rate

  • We focused on the Predicting Student’s Performance, one of the most popular Educational data mining (EDM) applications

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Summary

Introduction

Quality education is one of the Sustainable Development Goals (SDGs) approved by the United Nations forum in 2015 [1] and is a fundamental challenge to support sustainable development worldwide. A key element that must be taken into account when talking about sustainable development is the principle of equal opportunities. Student desertion in higher education is a critical issue that requires a global analysis. The dropout rates of university students generate a waste of resources for all actors in the education sector and even affect the evaluation processes of the institutions. The dropout rate is higher among engineering students [3]. It is proposed to carry out predictive analysis of the final grades (FGs) of computer engineering students that will support the processes of academic quality and mitigate the student dropout rate. Teachers and educational administrators must develop their understanding of sustainability and their ability to improve the curriculum and implement systems that allow for expanded learning opportunities [4]

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