调解
置信区间
统计
计量经济学
潜变量模型
变量(数学)
纵向数据
潜变量
增长曲线(统计)
结构方程建模
相关性(法律)
潜在增长模型
心理学
数学
计算机科学
数据挖掘
法学
数学分析
政治学
作者
Tilmann von Soest,Knut A. Hagtvet
标识
DOI:10.1080/10705511.2011.557344
摘要
Abstract This article presents several longitudinal mediation models in the framework of latent growth curve modeling and provides a detailed account of how such models can be constructed. Logical and statistical challenges that might arise when such analyses are conducted are also discussed. Specifically, we discuss how the initial status (intercept) and change (slope) of the putative mediator variable can be appropriately included in the causal chain between the independent and dependent variables in longitudinal mediation models. We further address whether the slope of the dependent variable should be controlled for the dependent variable's intercept to improve the conceptual relevance of the mediation models. The models proposed are illustrated by analyzing a longitudinal data set. We conclude that for certain research questions in developmental science, a multiple mediation model where the dependent variable's slope is controlled for its intercept can be considered an adequate analytical model. However, such models also show several limitations. Keywords: changegrowth curvesindirect effectlongitudinalmediation Notes Notes: * = p < .05 (based on bias-corrected bootstrap confidence intervals). ns = non significant (based on bias-corrected bootstrap confidence intervals). 95% CI = 95% bias-corrected bootstrap confidence intervals. Notes: * = p < .05 (based on bias-corrected bootstrap confidence intervals). ns = non significant (based on bias-corrected bootstrap confidence intervals). 95% CI = 95% bias-corrected bootstrap confidence intervals.
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