A New Methodological Framework for Project Design to Analyse and Prevent Students from Dropping Out of Higher Education

Author:

Flores Vaneza,Heras Stella,Julián VicenteORCID

Abstract

The problem of university dropout is a recurring issue in universities that affects students, especially in the first year of studies. The situation is aggravated by the COVID-19 pandemic, which has imposed a virtual education, generating a greater amount of data in addition to historical information, and thus, a greater demand for strategies to design projects based on Educational Data Mining (EDM). To deal with this situation, we present a framework for designing EDM projects based on the construction of a problem tree. The result is the proposal of a framework that merges the six phases of the CRISP-DM methodology with the first stage of the Logical Framework Methodology (LFM) to increase university retention. To illustrate this framework, we have considered the design of a project based on data mining to prevent students from dropping out of a Peruvian university.

Funder

Ministry of Economy, Industry and Competitiveness

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference104 articles.

1. The Role of Universities in Post-Pandemic Economic Recoveryhttps://www.iesalc.unesco.org/2020/07/31/el-rol-de-las-universidades-en-la-recuperacion-economica-post-pandemia/

2. Public university education in Colombia in the face of COVID-19;Leguizamon;Ways Educ. Dialogues Cult. Divers.,2020

3. Peru: Higher education in the context of the COVID-19 pandemic;Figallo;J. High. Educ. Lat. Am.,2020

4. The Effect of COVID-19 on Economics and Education: Strategies for Colombia’s Virtual Education;Rivera;Sci. J.,2020

5. Pandemic and Higher Education;Ordorika;J. High. Educ.,2020

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