A Data-Driven Causal Modelling Analysis of Socio-Economic Factors and Its Impact on Student’s Performance: A Case Study of a Junior High School in Bali
S. Rajagukguk, Dhomas Hatta Fudholi, A. R. Pratama
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引用次数: 0
Abstract
Efforts to understand student performance have long been a highly-researched topic in the field of applied education computing. Current research in the field still places its focus on understanding and analyzing student performance using definitive variables such as the student’s scores and their cognitive capabilities, which by themselves already explain the student’s performance. The great diversity of Indonesian culture, which includes people from a wide range of socioeconomic origins, makes it all the more surprising that so little research has been done to examine the hidden socioeconomic aspects that may affect student performance. Research conducted on a single school may not be generalizable because of the diversity among them in terms of the elements that affect students' academic outcomes. In this investigation, we employ a causal modelling strategy that is data-driven to examine academic achievement. Data was retrieved from a public junior high school in Bali, Indonesia, and then processed with the Non-combinatorial Optimization via Trace Exponential and Augmented lagRangian for Structure Learning (NOTEARS) and Bayesian Network algorithm in order to discover a latent causal structure and the effect between variables discovered from the structure. Findings show that the average skill score of a student is significantly influenced by the distance from school, the education level and income of parents, and their place in the family. Meanwhile, the average knowledge score is mainly influenced by the average skill score, the order in the family, and the parent’s income level. The results of the study also show potential for practical implications where schools, researchers, and governments, can rethink their approach to education by analyzing data with the proposed approach. The limitations of this study include the quality of data to discover patterns and the limited number of variables used to study student performance factors. Future research may consider the use of more holistic, complete variables in order to discover more insights regarding student performance.
长期以来,了解学生成绩一直是应用教育计算领域一个备受关注的话题。目前该领域的研究仍然把重点放在理解和分析学生的表现上,使用诸如学生的分数和他们的认知能力等明确的变量,这些变量本身已经解释了学生的表现。印度尼西亚文化的巨大多样性,包括来自广泛的社会经济背景的人,使得对可能影响学生表现的隐藏的社会经济方面的研究如此之少更加令人惊讶。对一所学校进行的研究可能无法一概而论,因为影响学生学业成绩的因素在各个学校之间存在差异。在这项调查中,我们采用了一种数据驱动的因果模型策略来检查学术成就。以印度尼西亚巴厘岛的一所公立初中为研究对象,通过Trace Exponential and Augmented lagRangian for Structure Learning (NOTEARS)和Bayesian Network算法对数据进行非组合优化处理,发现潜在的因果结构以及从结构中发现的变量之间的影响。研究结果表明,学生的平均技能得分受学校距离、父母的教育水平和收入以及父母在家庭中的地位的显著影响。同时,平均知识得分主要受平均技能得分、家庭顺序和父母收入水平的影响。这项研究的结果也显示了潜在的实际意义,学校、研究人员和政府可以通过使用拟议的方法分析数据来重新思考他们的教育方法。本研究的局限性包括发现模式的数据质量和用于研究学生表现因素的变量数量有限。未来的研究可能会考虑使用更全面、完整的变量,以发现更多关于学生表现的见解。