4.4 Article

Bayesian Inference of Dynamic Mediation Models for Longitudinal Data

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ROUTLEDGE JOURNALS, TAYLOR & FRANCIS LTD
DOI: 10.1080/10705511.2023.2230519

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AR process; Bayesian inference; causal mediation effect; dynamic mediation; >

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Mediation analysis is widely used in various scientific fields, and we propose dynamic mediation models to capture the dynamic nature of mediation effects. Bayesian methods are utilized to estimate unknown parameters, and the models and methods are evaluated through simulations and real data application.
Mediation analysis is widely applied in various fields of science, such as psychology, epidemiology, and sociology. In practice, many psychological and behavioral phenomena are dynamic, and the corresponding mediation effects are expected to change over time. However, most existing mediation methods assume a static mediation effect over time, which overlooks the dynamic nature of mediation effect. To address this issue, we propose dynamic mediation models that can capture the dynamic nature of the mediation effect. Specifically, we model the path parameters of mediation models as auto-regressive (AR) processes of time that can vary over time. Additionally, we define the mediation effect under the potential outcome framework, and examine its identification and causal interpretation. Bayesian methods utilizing Gibbs sampling are adopted to estimate unknown parameters in the proposed dynamic mediation models. We further evaluate our proposed models and methods through extensive simulations and illustrate their application through a real data application.

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