Considering between- and within-person relations in auto-regressive cross-lagged panel models for developmental data

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC ACS Applied Electronic Materials Pub Date : 2023-11-08 DOI:10.1016/j.jsp.2023.101258
Lesa Hoffman , Garret J. Hall
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Abstract

Longitudinal data can provide inferences at both the between-person and within-person levels of analysis, but only to the extent that the statistical models chosen for data analysis are specified to adequately capture these distinct sources of association. The present work focuses on auto-regressive cross-lagged panel models, which have long been used to examine time-lagged reciprocal relations and mediation among multiple variables measured repeatedly over time. Unfortunately, many common implementations of these models fail to distinguish between-person associations among individual differences in the variables' amounts and changes over time, and thus confound between-person and within-person relations either partially or entirely, leading to inaccurate results. Furthermore, in the increasingly complex model variants that continue to be developed, what is not easily appreciated is how substantial differences in interpretation can be created by what appear to be trivial differences in model specification. In the present work, we aimed to (a) help analysts become better acquainted with the some of the more common model variants that fall under this larger umbrella, and (b) explicate what characteristics of one's data and research questions should be considered in selecting a model. Supplementary Materials include annotated model syntax and output using Mplus, lavaan in R, and sem in Stata to help translate these concepts into practice.

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考虑发展数据的自回归交叉滞后面板模型中人与人之间和人与人之间的关系
纵向数据可以在人与人之间和人与人之间的分析水平上提供推论,但仅限于为数据分析选择的统计模型被指定为充分捕捉这些不同的关联来源。目前的研究重点是自回归交叉滞后面板模型,该模型长期以来一直用于检验时间滞后的相互关系和随时间重复测量的多个变量之间的中介作用。不幸的是,这些模型的许多常见实现无法区分变量数量和随时间变化的个体差异之间的人与人之间的关联,从而部分或完全混淆了人与人之间和人与人之间的关系,导致结果不准确。此外,在不断开发的日益复杂的模型变体中,不容易理解的是,如何通过模型规范中看似微不足道的差异来创建解释中的实质性差异。在目前的工作中,我们的目标是(a)帮助分析人员更好地了解一些更常见的模型变体,这些模型变体属于这个更大的保护伞,(b)说明在选择模型时应该考虑数据和研究问题的哪些特征。补充材料包括带注释的模型语法和使用Mplus, R中的lavaan和Stata中的sem的输出,以帮助将这些概念转化为实践。
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CiteScore
7.20
自引率
4.30%
发文量
567
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