An Application of Machine Learning in Public Policy: Early Warning Prediction of School Dropout in the Chilean Public Education System

Jerome Smith Uldall, Cristián Gutiérrez Rojas
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Abstract

2021AbstractSchool dropout is a serious problem worldwide, and contributes to a great deal of poverty and misery. People who have not finished school obviously suffer the consequences, but these extend to all of society since they become a burden due to lack of education and skills for the workplace. Much like poverty, school dropout is complex and multidimensional. Hence, early warning systems that predict which children are at risk of dropping out of school are of the utmost importance, and furthermore, the interventions to rescue these children must be bespoke, i.e., tailored to the specific situation of each child. Much work has been done using traditional methods such as attendance thresholds and logistic regression. However, school dropout prediction by means of applying machine learning is relatively new. In addition, an application that has worked in one country does not necessarily work in another, since the available data sets are different. Therefore, the following question arises: does machine learning enable a more accurate early warning of school dropout specifically in Chile? In this paper we answer this question, testing and comparing machine learning predictive models with a traditional logistic regression, using public databases from the Chilean Ministry of Education. In addition, we offer some practical recommendations for other researchers and policy makers who endeavour to implement practical working early warning systems for school dropout.
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机器学习在公共政策中的应用:智利公共教育系统辍学的预警预测
摘要辍学是一个世界性的严重问题,它造成了大量的贫困和痛苦。没有完成学业的人显然会受到影响,但由于缺乏教育和工作技能,他们成为了整个社会的负担,因此这些后果会蔓延到整个社会。就像贫困一样,辍学也是一个复杂而多维的问题。因此,预测哪些儿童有辍学风险的早期预警系统至关重要,此外,拯救这些儿童的干预措施必须是定制的,即针对每个儿童的具体情况量身定制。传统的方法如出勤阈值和逻辑回归已经做了很多工作。然而,通过应用机器学习来预测辍学是相对较新的。此外,在一个国家有效的应用程序不一定在另一个国家有效,因为可用的数据集是不同的。因此,出现了以下问题:机器学习是否能够更准确地预警智利的辍学现象?在本文中,我们回答了这个问题,使用智利教育部的公共数据库,测试和比较机器学习预测模型与传统逻辑回归。此外,我们还为其他致力于实施实际工作的辍学预警系统的研究人员和政策制定者提供了一些实用的建议。
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