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An Exploration of Factors Linked to Academic Performance in PISA 2018 Through Data Mining Techniques

机译:通过数据挖掘技术与PISA 2018年学术成绩相关的因素探讨

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摘要

International large-scale assessments, such as PISA, provide structured and static data. However, due to its extensive databases, several researchers place it as a reference in Big Data in Education. With the goal of exploring which factors at country, school and student level have a higher relevance in predicting student performance, this paper proposes an Educational Data Mining approach to detect and analyze factors linked to academic performance. To this end, we conducted a secondary data analysis and built decision trees (C4.5 algorithm) to obtain a predictive model of school performance. Specifically, we selected as predictor variables a set of socioeconomic, process and outcome variables from PISA 2018 and other sources ( World Bank, 2020 ). Since the unit of analysis were schools from all the countries included in PISA 2018 ( n = 21,903), student and teacher predictor variables were imputed to the school database. Based on the available student performance scores in Reading, Math, and Science, we applied k-means clustering to obtain a categorized (three categories) target variable of global school performance. Results show the existence of two main branches in the decision tree, split according to the schools’ mean socioeconomic status (SES). While performance in high-SES schools is influenced by educational factors such as metacognitive strategies or achievement motivation, performance in low-SES schools is affected in greater measure by country-level socioeconomic indicators such as GDP, and individual educational indicators are relegated to a secondary level. Since these evidences are in line and delve into previous research, this work concludes by analyzing its potential contribution to support the decision making processes regarding educational policies.
机译:国际大规模评估,如PISA,提供结构化和静态数据。但是,由于其广泛的数据库,一些研究人员将其作为教育大数据的参考。本文提出了探索国家,学校和学生层面的哪些因素,在预测学生绩效方面具有更高的相关性,提出了一种教育数据挖掘方法来检测和分析与学术表现相关的因素。为此,我们进行了次要数据分析和建立了决策树(C4.5算法),以获得学校表现的预测模型。具体而言,我们选择了PISA 2018和其他来源的一组社会经济,过程和结果变量(世界银行,2020年)。由于分析单位是2018年比萨(N = 21,903)中包含的所有国家的学校(n = 21,903),学生和教师预测变量被归咎于学校数据库。基于阅读,数学和科学中的可用学生性能分数,我们应用了K-Means群集,以获得全球学校绩效的分类(三类)目标变量。结果显示决策树中两个主要分支的存在,根据学校的意思是社会经济地位(SES)分开。虽然高层学校的表现受到教育因素的影响,如元认知策略或成就动机,但低层学校的表现受到GDP等国家级社会经济指标的更大措施,而个别教育指标被降级为第二个等级。由于这些证据符合前进和预见的研究,这项工作通过分析其潜在的贡献来支持支持关于教育政策的决策进程的潜在贡献。

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