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Using n-Level Structural Equation Models for Causal Modeling in Fully Nested, Partially Nested, and Cross-Classified Randomized Controlled Trials

机译:使用N级结构方程模型进行完全嵌套,部分嵌套和交叉分类随机对照试验的因果建模

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摘要

Complex data structures are ubiquitous in psychological research, especially in educational settings. In the context of randomized controlled trials, students are nested in classrooms but may be cross-classified by other units, such as small groups. Furthermore, in many cases only some students may be nested within a unit while other students may not. Such instances of partial nesting requires a more flexible framework for estimating treatment effects so that the model coefficients are correctly estimated. Although several recommendations have been offered to the field on handling partially nested data, few are comprehensive in their treatment of manifest and latent variables in the context of partial nesting, full nesting, and cross-classification. The present study introduces n-level structural equation modeling (SEM) as a flexible measurement and analytic framework for the estimation of treatment effects for complex data structures that frequently present in randomized controlled trials. In this tutorial, we explore how the notation of n-level SEM allows for parsimonious model specification whether data are observed or latent and in the presence of partial nested or cross-classified designs. By using the xxm package in R, the advantage of using n-level SEM framework is demonstrated through five examples for single outcome manifest variables, as in the traditional multilevel model, as well as latent applications as in multilevel SEM.
机译:复杂的数据结构普遍存在于心理研究,特别是在教育环境中。在随机对照试验的背景下,学生们嵌套在教室里,但可能被其他单位的交叉分类,例如小组。此外,在许多情况下,只有一些学生可以在一个单位内嵌套,而其他学生可能不会。部分嵌套的这种情况需要更灵活的框架来估计治疗效果,从而正确估计模型系数。虽然在处理部分嵌套数据的领域提供了几项建议,但在部分嵌套,完整嵌套和交叉分类的背景下,少数人们对清单和潜在的变量进行全面。本研究将N级结构方程建模(SEM)引入了柔性测量和分析框架,用于估计用于频繁存在于随机对照试验中的复杂数据结构的治疗效果。在本教程中,我们探讨了n级SEM的符号允许解析模型规范,是否观察到数据或潜伏以及在存在部分嵌套或交叉分类的设计中。通过使用R中的XXM包,使用n级SEM框架的优点来证明通过传统的多级模型中的单个结果清单变量的五个例子,以及多维型SEM中的潜在应用。

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