A primer on continuous-time modeling in educational research: an exemplary application of a continuous-time latent curve model with structured residuals (CT-LCM-SR) to PISA Data

IF 2.6 Q1 EDUCATION & EDUCATIONAL RESEARCH
Julian F. Lohmann, Steffen Zitzmann, Manuel C. Voelkle, Martin Hecht
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引用次数: 7

Abstract

One major challenge of longitudinal data analysis is to find an appropriate statistical model that corresponds to the theory of change and the research questions at hand. In the present article, we argue that continuous-time models are well suited to study the continuously developing constructs of primary interest in the education sciences and outline key advantages of using this type of model. Furthermore, we propose the continuous-time latent curve model with structured residuals (CT-LCM-SR) as a suitable model for many research questions in the education sciences. The CT-LCM-SR combines growth and dynamic modeling and thus provides descriptions of both trends and process dynamics. We illustrate the application of the CT-LCM-SR with data from PISA reading literacy assessment of 2000 to 2018 and provide a tutorial and annotated code for setting up the CT-LCM-SR model.

Abstract Image

教育研究中的连续时间建模入门:具有结构化残差的连续时间潜曲线模型(CT-LCM-SR)在PISA数据中的典型应用
纵向数据分析的一个主要挑战是找到一个与变化理论和手头的研究问题相对应的适当的统计模型。在本文中,我们认为连续时间模型非常适合研究教育科学中主要感兴趣的持续发展的结构,并概述了使用这种模型的主要优势。此外,我们提出了具有结构化残差的连续时间潜在曲线模型(CT-LCM-SR),作为教育科学中许多研究问题的合适模型。CT-LCM-SR结合了增长和动态建模,因此提供了趋势和过程动态的描述。本文以2000 - 2018年国际学生评估项目(PISA)的阅读能力评估数据为例,说明了CT-LCM-SR模型的应用,并提供了构建CT-LCM-SR模型的教程和注释代码。
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来源期刊
Large-Scale Assessments in Education
Large-Scale Assessments in Education Social Sciences-Education
CiteScore
4.30
自引率
6.50%
发文量
16
审稿时长
13 weeks
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