A machine learning approach to predict university enrolment choices through students' high school background in Italy

Andrea Priulla, Alessandro Albano, Nicoletta D'Angelo, Massimo Attanasio
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Abstract

This paper explores the influence of Italian high school students' proficiency in mathematics and the Italian language on their university enrolment choices, specifically focusing on STEM (Science, Technology, Engineering, and Mathematics) courses. We distinguish between students from scientific and humanistic backgrounds in high school, providing valuable insights into their enrolment preferences. Furthermore, we investigate potential gender differences in response to similar previous educational choices and achievements. The study employs gradient boosting methodology, known for its high predicting performance and ability to capture non-linear relationships within data, and adjusts for variables related to the socio-demographic characteristics of the students and their previous educational achievements. Our analysis reveals significant differences in the enrolment choices based on previous high school achievements. The findings shed light on the complex interplay of academic proficiency, gender, and high school background in shaping students' choices regarding university education, with implications for educational policy and future research endeavours.
通过意大利学生的高中背景预测大学入学选择的机器学习方法
本文探讨了意大利高中生的数学和意大利语水平对其大学入学选择的影响,尤其侧重于 STEM(科学、技术、工程和数学)课程。我们区分了来自科学背景和人文背景的高中生,为了解他们的入学偏好提供了宝贵的视角。此外,我们还研究了性别差异对以往类似教育选择和成就的潜在影响。研究采用了梯度提升方法,该方法以预测性能高、能够捕捉数据中的非线性关系而著称,并对与学生社会人口特征及其以往教育成就相关的变量进行了调整。我们的分析揭示了基于以往高中成绩的入学选择的显著差异。研究结果揭示了学术能力、性别和高中背景在影响学生大学教育选择方面的复杂相互作用,对教育政策和未来的研究工作具有启示意义。
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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