利用机器学习发现影响菲律宾免费高等教育接受者满意度的关键因素

John Raymund B. Baragas, Lea D. Austero, J. Llovido, Lany L. Maceda, Mideth B. Abisado
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摘要

尽管《普及优质高等教育法》(UAQTE)得到了广泛实施--这项开创性的立法自 2017 年颁布以来已惠及 200 多万学生--但对其成果的全面评估却明显缺失。为了弥补这一差距,我们在菲律宾选定地区的即将毕业的大学生中开展了一项广泛的调查。这项经过精心设计的调查旨在找出 UAQTE 被忽视的方面,并从受惠者那里获取第一手资料。调查采用的方法包括与各利益相关方(即学生、家长、教师)进行焦点小组讨论,以及反映目标人群的试点测试。为了便于分析 1462 份回复的结果,我们采用了五种回归机器学习算法来分析问卷数据。结果发现,决策树回归模型的均方根误差(root-mean-squared-error)为 0.6881,是描述所收集的问卷数据的最佳模型。对表现最佳模型的 Shapley 解释突出表明,受援者对国际就业的渴望是预测受援者对 UAQTE 满意度的首要因素。此外,通过对已部署调查中的开放式问题进行主题建模,发现 UAQTE 的补贴可能存在不足,特别是对那些攻读科学、技术、工程和数学课程学位的受助者而言。这一实质性发现为了解立法的有效性提供了有价值的见解,并为今后的政策调整提供了参考,从而更好地满足菲律宾高等教育的不同需求。总之,这项研究为评估 UAQTE 的影响提供了一个强有力的框架,并展示了一种将机器学习与定性分析相结合的合理方法。
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Leveraging Machine Learning to Uncover Key Factors Influencing Satisfaction Among Free Tertiary Education Recipients in the Philippines
In spite of the broad implementation of the Universal Access to Quality Tertiary Education Act (UAQTE) - a groundbreaking legislation benefitting over 2 million students since its enactment in 2017 - a comprehensive evaluation of its outcomes has been notably absent. To bridge this gap, an extensive survey was undertaken among graduating tertiary students in selected regions of the Philippines. This strategically designed survey aimed to pinpoint overlooked aspects of UAQTE and capture firsthand insights from its recipients. The methodology employed to create this survey included focus-group discussions with various stakeholders (i.e., students, parents, faculty) and a pilot test reflecting the target demographic. To facilitate analysis of the results of 1462 responses, five regression machine learning algorithms were then employed to analyze questionnaire data. The decision tree regressor with a root-mean-squared-error of 0.6881 was found to be the best performing model describing the collected questionnaire data. Shapley explanations of the best performing model highlighted the desire of the recipient to pursue international employment as the top predictor of satisfaction in UAQTE among its recipients. Furthermore, insights from employed topic modeling among the open-ended questions in the deployed survey suggested potential inadequacy of UAQTE subsidies, specifically to recipients whose pursued degrees are in the science, technology, engineering, and mathematics courses. This substantial finding promises valuable insights into the effectiveness of the legislation and may inform future policy adjustments to better address the diverse needs of tertiary education in the Philippines. Overall, this research provides a robust framework for assessing the impact of UAQTE and showcases a methodologically sound approach in integrating machine learning and qualitative analysis.
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