Predictors of Reading Performance of Fourth-Graders

IF 2.8 3区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Kıvanç Bozkuş
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引用次数: 0

Abstract

This study aimed to employ machine learning techniques to uncover the pivotal determinants influencing the reading proficiency of fourth-grade students across 65 regions, as participants in the PIRLS 2021 assessment. The primary objective was to discern and assess key factors at the student, family and school levels that predict high and low reading performance among these students. Utilising a machine learning approach, this research analysed data from 204,176 fourth-grade students encompassing 122 independent variables. The Support Vector Machine (SVM) algorithm was employed to effectively differentiate between students with high and low reading performance based on the identification of 16 crucial contextual factors. The results revealed that the most influential factors predominantly resided at the family level, encompassing socioeconomic variables. These factors pertained to the provision of personalised study environments, facilitated through access to an internet connection, individual study desks, dedicated study rooms, an assortment of books and personal smartphones. At the student level, significant factors included reading motivation, gender and age. Meanwhile, school-level determinants encompassed aspects such as ineffective classroom regulations, absenteeism rates, the presence of libraries and the availability of digital learning resources.

Abstract Image

四年级学生阅读成绩的预测因素
本研究旨在利用机器学习技术来揭示影响PIRLS 2021评估参与者的65个地区四年级学生阅读能力的关键决定因素。主要目的是辨别和评估学生、家庭和学校层面的关键因素,这些因素可以预测这些学生的阅读成绩好坏。利用机器学习方法,这项研究分析了来自204,176名四年级学生的数据,包括122个自变量。在识别16个关键语境因素的基础上,采用支持向量机(SVM)算法有效区分阅读成绩高低的学生。结果显示,最具影响力的因素主要存在于家庭层面,包括社会经济变量。这些因素与提供个性化学习环境有关,通过互联网连接、个人学习桌、专用自习室、各种书籍和个人智能手机来促进个性化学习环境的提供。在学生层面,显著的因素包括阅读动机、性别和年龄。与此同时,学校层面的决定因素包括课堂管理不力、缺勤率、图书馆的存在和数字学习资源的可用性等方面。
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来源期刊
European Journal of Education
European Journal of Education EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
4.50
自引率
0.00%
发文量
47
期刊介绍: The prime aims of the European Journal of Education are: - To examine, compare and assess education policies, trends, reforms and programmes of European countries in an international perspective - To disseminate policy debates and research results to a wide audience of academics, researchers, practitioners and students of education sciences - To contribute to the policy debate at the national and European level by providing European administrators and policy-makers in international organisations, national and local governments with comparative and up-to-date material centred on specific themes of common interest.
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