🌙

存在测量误差时中介效应的证据衡量

Measuring Evidence for Mediation in the Presence of Measurement Error

Journal of Marketing Research · 2023
被引 11
人大 AFT50UTD24ABS 4*

中文导读

针对中介分析中因果方向不确定的问题,提出结合贝叶斯因子和潜变量模型的方法,利用条件独立性和总效应来确认中介模型,适用于理论不足或变量测量顺序存疑的场景。

Abstract

Mediation analysis empirically investigates the process underlying the effect of an experimental manipulation on a dependent variable of interest. In the simplest mediation setting, the experimental treatment can affect the dependent variable through the mediator (indirect effect) and/or directly (direct effect). However, what appears to be an indirect effect in standard mediation analysis may reflect a data-generating process without mediation, including the possibility of a reversed causal ordering of measured variables, regardless of the statistical properties of the estimate. To overcome this indeterminacy where possible, the authors develop the insight that a statistically reliable total effect, combined with strong evidence for conditional independence of the treatment and the outcome given the mediator, is unequivocal evidence for mediation as the underlying causal model into an operational procedure. This is particularly helpful when theory is insufficient to definitely causally order measured variables, or when the dependent variable is measured before what is believed to be the mediator. The procedure combines Bayes factors as principled measures of the degree of support for conditional independence, with latent variable modeling to account for measurement error and discretization in a fully Bayesian framework. The authors reanalyze a set of published mediation studies to illustrate how their approach facilitates stronger conclusions.

中介分析因果推断贝叶斯统计测量误差