Ivan Jacob Agaloos Pesigan, Michael A Russell, Sy-Miin Chow
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Previous work in the area (e.g., Deboeck & Preacher, 2015; Ryan & Hamaker, 2021) has shown how the direct, indirect, and total effects, for a range of time-interval values, can be calculated using parameters estimated from continuous-time vector autoregressive models for causal inferential purposes. However, both standardized effects size measures and methods for calculating the uncertainty around the direct, indirect, and total effects in continuous-time mediation have yet to be explored. Drawing from the mediation model literature, we present and compare results using the delta, Monte Carlo, and parametric bootstrap methods to calculate SEs and confidence intervals for the direct, indirect, and total effects in continuous-time mediation for inferential purposes. Options to automate these inferential procedures and facilitate interpretations are available in the cTMed R package. 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引用次数: 0
摘要
使用纵向数据的中介建模是一个令人兴奋的领域,它可以捕获动态变化(如中介变化)中随时间变化的相互关系。尽管离散时间向量自回归方法通常用于估计纵向数据中的间接影响,但由于推论结果依赖于连续事件之间的时间间隔和假设测量之间的规则间隔,它们具有已知的局限性。连续时间向量自回归模型已被提出作为解决这些问题的替代方案。该领域之前的研究(例如,Deboeck & Preacher, 2015; Ryan & Hamaker, 2021)表明,为了进行因果推理,可以使用从连续时间向量自回归模型中估计的参数来计算一系列时间间隔值的直接、间接和总效应。然而,对于连续时间中介中直接、间接和总效应的不确定性的计算方法和标准化效应大小的测量方法还有待探索。根据中介模型文献,我们提出并比较了使用delta、Monte Carlo和参数自举方法的结果,以计算连续时间中介中直接、间接和总效应的se和置信区间。cTMed R包中提供了自动化这些推理过程和促进解释的选项。(PsycInfo Database Record (c) 2025 APA,版权所有)。
Inferences and effect sizes for direct, indirect, and total effects in continuous-time mediation models.
Mediation modeling using longitudinal data is an exciting field that captures the interrelations in dynamic changes, such as mediated changes, over time. Even though discrete-time vector autoregressive approaches are commonly used to estimate indirect effects in longitudinal data, they have known limitations due to the dependency of inferential results on the time intervals between successive occasions and the assumption of regular spacing between measurements. Continuous-time vector autoregressive models have been proposed as an alternative to address these issues. Previous work in the area (e.g., Deboeck & Preacher, 2015; Ryan & Hamaker, 2021) has shown how the direct, indirect, and total effects, for a range of time-interval values, can be calculated using parameters estimated from continuous-time vector autoregressive models for causal inferential purposes. However, both standardized effects size measures and methods for calculating the uncertainty around the direct, indirect, and total effects in continuous-time mediation have yet to be explored. Drawing from the mediation model literature, we present and compare results using the delta, Monte Carlo, and parametric bootstrap methods to calculate SEs and confidence intervals for the direct, indirect, and total effects in continuous-time mediation for inferential purposes. Options to automate these inferential procedures and facilitate interpretations are available in the cTMed R package. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
期刊介绍:
Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.