What explains Macau students’ achievement? An integrative perspective using a machine learning approach (¿Cuál es la explicación del rendimiento de los estudiantes macaenses? Una perspectiva integradora mediante la adopción del enfoque del aprendizaje automático)

IF 1 4区 教育学 Q4 PSYCHOLOGY, DEVELOPMENTAL
Yi Wang, Ronnel King, Joseph Haw, Shing on Leung
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引用次数: 2

Abstract

ABSTRACT Although Macau students have consistently been recognized as top performers in international assessments, little research has been conducted to explore the various factors that are associated with their achievement. This paper aimed to identify factors that could best predict Macau students’ reading achievement using PISA 2018 data provided by 2,979 15-year-old students. An integrative theoretical model that considered the critical roles of demographic, personal and social-contextual factors was used to understand the relative importance of 41 different factors in predicting reading achievement. A machine learning approach, specifically Random Forest Algorithm, was used to analyse the data. Results indicated that variables classified under personal factors (e.g., metacognitive strategies, reading enjoyment and perceived difficulty) were the most important predictors of Macau students’ achievement. A supplementary analysis using Hierarchical Linear Modelling confirmed the findings from the machine learning approach. Implications of the findings were discussed.
澳门学生的成就为何?使用机器学习方法的综合视角(如何解释澳门学生的表现?采用机器学习方法的综合视角)
虽然澳门学生在国际评估中一直被认为是表现最好的,但很少有研究探讨与他们的成就相关的各种因素。本文旨在利用2979名15岁学生提供的2018年PISA数据,找出最能预测澳门学生阅读成绩的因素。本研究采用了一个综合理论模型,考虑了人口、个人和社会背景因素的关键作用,以了解41个不同因素在预测阅读成绩中的相对重要性。使用机器学习方法,特别是随机森林算法来分析数据。结果表明,元认知策略、阅读乐趣和感知难度等个人因素是澳门学生成绩的最重要预测因子。使用层次线性模型的补充分析证实了机器学习方法的发现。讨论了研究结果的意义。
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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来源期刊
CiteScore
2.30
自引率
12.50%
发文量
25
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