Little and often: Causal inference machine learning demonstrates the benefits of homework for improving achievement in mathematics and science

IF 4.7 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Learning and Instruction Pub Date : 2024-07-01 DOI:10.1016/j.learninstruc.2024.101968
Nathan McJames , Andrew Parnell , Ann O'Shea
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Abstract

Background

Despite its important role in education, significant gaps remain in the literature on homework. Notably, there is a dearth of understanding regarding how homework effects vary across different subjects, how student backgrounds may moderate its effectiveness, what the optimal amount and distribution of homework is, and how the causal impact of homework can be disentangled from other associations.

Aims

This study examines the different effects of homework frequency and duration on student achievement in both mathematics and science while adopting a causal inference probabilistic framework.

Sample

Our data consists of a nationally representative sample of 4118 Irish eighth grade students, collected as part of TIMSS 2019.

Methods

We employ an extension of a causal inference machine learning model called Bayesian Causal Forests that allows us to consider the effect of homework on achievement in mathematics and science simultaneously. By investigating the impacts of both homework frequency and duration, we discern the optimal frequency and duration for homework in both subjects. Additionally, we explore the potential moderating role of student socioeconomic backgrounds.

Results

Daily homework benefitted mathematics achievement the most, while three to four days per week was most effective for science. Short-duration assignments proved equally as effective as longer ones in both subjects. Notably, students from advantaged socioeconomic backgrounds did not gain more from homework.

Conclusions

These findings can guide policies aimed at enhancing student outcomes while promoting a balance between academic responsibilities and extracurricular activities.

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少而精:因果推理机器学习证明了家庭作业对提高数学和科学成绩的益处
背景尽管家庭作业在教育中发挥着重要作用,但有关家庭作业的文献仍存在很大差距。值得注意的是,关于家庭作业的效果在不同学科之间有何差异、学生背景如何影响家庭作业的效果、家庭作业的最佳数量和分布是什么,以及如何将家庭作业的因果影响与其他关联区分开来等问题,人们还缺乏足够的了解。样本我们的数据由具有全国代表性的 4118 名爱尔兰八年级学生样本组成,该样本是 TIMSS 2019 的一部分。方法我们采用了一种名为贝叶斯因果森林的因果推理机器学习模型的扩展,该模型允许我们同时考虑家庭作业对数学和科学成绩的影响。通过研究家庭作业频率和持续时间的影响,我们找出了两个科目的最佳家庭作业频率和持续时间。此外,我们还探讨了学生社会经济背景的潜在调节作用。结果 每天的家庭作业对数学成绩最有帮助,而每周三到四天的家庭作业对科学成绩最有效。事实证明,在这两个学科中,短时作业与长时作业同样有效。值得注意的是,社会经济背景优越的学生并没有从家庭作业中获得更多的益处。结论这些发现可以为旨在提高学生成绩的政策提供指导,同时促进学业责任与课外活动之间的平衡。
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来源期刊
CiteScore
11.30
自引率
4.80%
发文量
109
期刊介绍: As an international, multi-disciplinary, peer-refereed journal, Learning and Instruction provides a platform for the publication of the most advanced scientific research in the areas of learning, development, instruction and teaching. The journal welcomes original empirical investigations. The papers may represent a variety of theoretical perspectives and different methodological approaches. They may refer to any age level, from infants to adults and to a diversity of learning and instructional settings, from laboratory experiments to field studies. The major criteria in the review and the selection process concern the significance of the contribution to the area of learning and instruction, and the rigor of the study.
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