Applying the hierarchical linear model to longitudinal data / La aplicación del modelo lineal jerárquico a datos longitudinales

R. Walters, Lesa Hoffman
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引用次数: 2

Abstract

Abstract Educational researchers and school administrators frequently evaluate academic outcomes collected from cross-sectional sampling designs with overt nested structures, such as when students are nested within schools. More recently, interest has focused on the longitudinal collection of academic outcomes to evaluate a student’s growth across time. In a longitudinal context, the repeatedly measured academic outcomes are nested within a student. Proper analysis of longitudinal data requires the hierarchical linear model to quantify the extra correlations within students created by the nested sampling structure. In this article, we introduce the hierarchical linear model used to quantify and predict between-student differences in a repeatedly measured continuous maths achievement outcome. This introduction is presented as a conversation representative of those we have frequently with individuals who lack statistical training in hierarchical linear models for longitudinal data. Specifically, we cover why repeated-measures ANOVA may not always be appropriate, how the hierarchical linear model can be used to quantify between-student differences in change and how student- and occasion-level predictors can be properly modelled and interpreted.
纵向数据应用层次线性模型/ La aplicación del modelo linear jerárquico a datos longitudinal
教育研究人员和学校管理者经常评估从具有明显嵌套结构的横截面抽样设计中收集的学术成果,例如当学生嵌套在学校中时。最近,人们的兴趣集中在学术成果的纵向收集上,以评估学生在不同时间的成长。在纵向背景下,反复测量的学术成果嵌套在一个学生身上。纵向数据的正确分析需要层次线性模型来量化嵌套抽样结构在学生内部产生的额外相关性。在本文中,我们介绍了用于量化和预测重复测量连续数学成绩结果的学生之间差异的层次线性模型。这篇介绍是作为我们经常与缺乏纵向数据分层线性模型统计训练的个人进行的对话的代表。具体来说,我们涵盖了为什么重复测量ANOVA可能并不总是合适的,如何使用分层线性模型来量化学生之间的变化差异,以及如何正确建模和解释学生和场合水平的预测因子。
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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