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纵向数据的中介效应分析

研究成果: 雜誌貢獻期刊論文同行評審

30   連結會在新分頁中打開 引文 斯高帕斯(Scopus)

摘要

Over the past 30 years, most efforts on testing for mediation have been based on cross-sectional data, which may not get causal inference. A possible solution for this could be to collect longitudinal data and perform a longitudinal mediation analysis. There are three causal arrows in a simple mediation model for analyzing a system of causality. If there is at least one causal arrow where the effect arises sometime after the cause, a longitudinal mediation design will be necessary for effectively observing the causation. There are three types of longitudinal mediation analysis approaches: (1) cross-lagged panel model (CLPM); (2) multilevel mediation model (MLM); (3) latent growth mediation model (LGM). There are four types of development of longitudinal mediation analysis. First, time-varying effect of mediation effect is tested. Continuous time models (CTM) would illustrate how mediating effects vary as a function of lag. Multilevel time-varying coefficient model (MTVCM) can capture direct and indirect effects over time. Second, individuals-varying effect of mediation effect is investigated. Random-effects cross-lagged panel model (RE-CLPM) and Multilevel autoregressive mediation model (MAMM) should be adopted to analyze longitudinal mediation. Third, during integration between different longitudinal mediation models, the outstanding performance is the integration of CLPM and MLM into MAMM. Fourth, the method testing mediation analysis is compared. Bayesian method should be adopted in mediation analysis of MAMM and MTVCM. Bootstrap method should be adopted in mediation analysis of LGM. In the present study, we propose a procedure to analyze longitudinal mediation analysis. The first step is to decide whether it is necessary to make a causal inference. If the aim of research is to make a causal inference, then proceed with the second step. Otherwise, LGM or MLM should be adopted to analyze longitudinal mediation. In the second step, we decide whether it is necessary to test time-varying effect of mediation effect. If the aim of research is to test the time-varying effect of mediation effect, CTM should be adopted to analyze longitudinal mediation. Otherwise, proceed with the third step. The third step is to decide whether it is necessary to investigate the individuals-varying effect of mediation effect. If the aim of research is to investigate the individuals-varying effect of mediation effect, RE-CLPM model or MAMM should be adopted to analyze longitudinal mediation. Otherwise, CLPM should be adopted to analyze longitudinal mediation.

貢獻的翻譯標題Mediation Analysis of Longitudinal Data
原文繁體中文
頁(從 - 到)989-996
頁數8
期刊Journal of Psychological Science
44
發行號4
DOIs
出版狀態已發佈 - 2021 7月 20

Keywords

  • cross-lagged panel model
  • latent growth model
  • longitudinal data
  • mediation effect
  • multilevel model

ASJC Scopus subject areas

  • 應用心理學
  • 臨床心理學
  • 發展與教育心理學
  • 實驗與認知心理學

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