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跨国预测高等教育中的辍学现象

Predicting dropout in Higher Education across borders

Studies in Higher Education · 2023
被引 16
ABS 3

中文导读

研究比较了意大利和荷兰两所大学的学生辍学因素,发现基于荷兰数据训练的模型能更好地预测意大利学生的辍学,且大学成绩数据显著提升预测能力。

Abstract

Study success in Higher Education is of primary importance in the European policy agenda. Yet, given the diverse educational landscape across countries and institutions, more coordinated action is needed to gain a more solid knowledge of the dropout phenomenon. This study aims to gain a better insight into students’ dropout based on an integrated comparative study of two universities located in two different European countries: Politecnico di Milano (Italy) and Vrije Universiteit Amsterdam (the Netherlands). This research aims at assessing whether the factors affecting dropout are similar in the Italian and the Dutch contexts by testing the predictive capacity of ad-hoc models trained in other university-country settings at three different stages of the student’s university journey: (i) enrolment, (ii) end of the first semester, and (iii) end of the first year. Results show that the predictive capacity of models is exchangeable across different contexts, and it improves dramatically once data on university performance becomes available. We find that the models trained in the Dutch context have a better ability to identify dropouts in the Italian context than the other way around. Models trained on Dutch data allow us to better understand the relationship between educational credits obtained, the most important variable across models, and students’ dropout. This study contributes to creating a European common arena for discussing Higher Education success issues.

高等教育学生辍学跨文化比较预测模型