Fritz Matthew S, Kenny David A, MacKinnon David P
a Department of Educational Psychology , University of Nebraska-Lincoln.
b Department of Psychology , University of Connecticut.
Multivariate Behav Res. 2016 Sep-Oct;51(5):681-697. doi: 10.1080/00273171.2016.1224154.
Mediation analysis requires a number of strong assumptions be met in order to make valid causal inferences. Failing to account for violations of these assumptions, such as not modeling measurement error or omitting a common cause of the effects in the model, can bias the parameter estimates of the mediated effect. When the independent variable is perfectly reliable, for example when participants are randomly assigned to levels of treatment, measurement error in the mediator tends to underestimate the mediated effect, while the omission of a confounding variable of the mediator-to-outcome relation tends to overestimate the mediated effect. Violations of these two assumptions often co-occur, however, in which case the mediated effect could be overestimated, underestimated, or even, in very rare circumstances, unbiased. To explore the combined effect of measurement error and omitted confounders in the same model, the effect of each violation on the single-mediator model is first examined individually. Then the combined effect of having measurement error and omitted confounders in the same model is discussed. Throughout, an empirical example is provided to illustrate the effect of violating these assumptions on the mediated effect.
中介分析需要满足一些强有力的假设,以便做出有效的因果推断。如果未能考虑这些假设的违背情况,例如未对测量误差进行建模或在模型中遗漏效应的共同原因,可能会使中介效应的参数估计产生偏差。当自变量完全可靠时,例如当参与者被随机分配到治疗水平时,中介变量中的测量误差往往会低估中介效应,而遗漏中介变量与结果关系的混杂变量往往会高估中介效应。然而,这两个假设的违背情况经常同时出现,在这种情况下,中介效应可能被高估、低估,甚至在非常罕见的情况下无偏差。为了在同一模型中探讨测量误差和遗漏混杂因素的综合影响,首先分别考察每种违背情况对单中介模型的影响。然后讨论在同一模型中存在测量误差和遗漏混杂因素的综合影响。全文提供了一个实证例子来说明违背这些假设对中介效应的影响。