The reasons why the Regression Tree Method is more suitable than General Linear Model to analyze complex educational datasets

Q4 Social Sciences
C. Gomes, G. Lemos, E. Jelihovschi
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引用次数: 3

Abstract

Any quantitative method is shaped by certain rules or assumptions which constitute its own rationale. It is not by chance that these assumptions determine the conditions and constraints which permit the evidence to be constructed. In this article, we argue why the Regression Tree Method’s rationale is more suitable than General Linear Model to analyze complex educational datasets. Furthermore, we apply the CART algorithm of Regression Tree Method and the Multiple Linear Regression in a model with 53 predictors, taking as outcome the students’ scores in reading of the 2011’s edition of the National Exam of Upper Secondary Education (ENEM; N = 3,670,089), which is a complex educational dataset. This empirical comparison illustrates how the Regression Tree Method is better suitable than General Linear Model for furnishing evidence about non-linear relationships, as well as, to deal with nominal variables with many categories and ordinal variables. We conclude that the Regression Tree Method constructs better evidence about the relationships between the predictors and the outcome in complex datasets.
回归树法比一般线性模型更适合分析复杂教育数据集的原因
任何定量方法都是由某些规则或假设形成的,这些规则或假设构成了其自身的基本原理。这些假设并不是偶然地决定了构成证据的条件和约束。在本文中,我们讨论了为什么回归树方法的基本原理比一般线性模型更适合分析复杂的教育数据集。此外,我们以2011年全国高中教育考试(ENEM)学生的阅读成绩作为结果,运用回归树法的CART算法和多元线性回归对具有53个预测因子的模型进行了分析。N = 3,670,089),这是一个复杂的教育数据集。这一实证比较说明了回归树方法如何比一般线性模型更适合于提供非线性关系的证据,以及处理具有许多类别和有序变量的名义变量。我们得出的结论是,回归树方法构建了关于复杂数据集中预测因子与结果之间关系的更好证据。
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
Revista Portuguesa de Educacao
Revista Portuguesa de Educacao Social Sciences-Education
CiteScore
0.50
自引率
0.00%
发文量
25
审稿时长
45 weeks
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