Sistema de Alerta para la Identificación de Posibles Factores de Deserción de Estudiantes de Grado en Período de Pandemia en Paraíba (Brasil)

IF 1 Q3 EDUCATION & EDUCATIONAL RESEARCH
Uyguaciara Veloso Castelo Branco, Edineide Jezine, Adriana Valéria Santos Diniz, Geovania Toscano Silva
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Abstract

This article is the result of reflections (which became more intense during the pandemic) aimed at identifying quantitative elements for developing a sure and fast method for evaluating the academic situation of undergraduate students, especially in relation to the risk that students may abandon their courses, and establishing academic management actions and interventions to prevent dropout from occurring. In this article we identify potential academic indicators, sociodemographic variables and teaching-environment factors to conduct a study focused on constructing a mathematical model. To achieve this objective, we used Cluster Analysis. Also, as a theoretical and methodological parameter, we used the Early Warning System developed at the University of Valencia (Spain) by Villar-Aguilés et al. (2017) with responses to two questionnaires (C1 and C2) as well as responses to the Teaching Environment Scale (questionnaire C3) validated by Castelo-Branco (2020). This model, which is based on our analysis of the variables’ ability to predict potential student dropout in a given year, enabled us to adapt the Early Warning System to the situation prevailing at the Federal University of Paraíba in Brazil. Since the items in questionnaires C1 and C3 helped to construct the analysis model, and this model provided good estimates, our data demonstrate the importance of Cluster Analysis for detecting signs of potential student dropout. They also reveal several characteristics that expose students to the risk of potential dropout and could help them take more informed decisions. The tendency for students to drop out during the second semester is also confirmed.
在paraiba(巴西)确定大流行期间本科生可能逃学因素的预警系统
本文是反思的结果(在大流行期间变得更加激烈),旨在确定定量因素,以制定一种可靠而快速的方法来评估本科生的学业状况,特别是与学生可能放弃课程的风险有关,并建立学术管理行动和干预措施,以防止退学的发生。在本文中,我们确定潜在的学术指标,社会人口变量和教学环境因素进行了研究,重点是构建数学模型。为了实现这一目标,我们使用了聚类分析。此外,作为理论和方法参数,我们使用了由villar - aguil等人(2017)在瓦伦西亚大学(西班牙)开发的预警系统,并对两份问卷(C1和C2)以及对Castelo-Branco(2020)验证的教学环境量表(问卷C3)的回应进行了回应。该模型是基于我们对变量预测某一年学生潜在退学能力的分析,使我们能够使早期预警系统适应巴西Paraíba联邦大学的普遍情况。由于问卷C1和C3中的项目有助于构建分析模型,并且该模型提供了很好的估计,因此我们的数据证明了聚类分析对于检测潜在学生退学迹象的重要性。他们还揭示了学生面临潜在退学风险的几个特征,可以帮助他们做出更明智的决定。第二学期学生退学的趋势也得到了证实。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
16.70%
发文量
15
审稿时长
16 weeks
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