The decomposition of the overall effect of a treatment into direct and indirect effects is here investigated with reference to a recursive system of binary random variables. We show how, for the single mediator context, the marginal effect measured on the log odds scale can be written as the sum of the indirect and direct effects plus a residual term that vanishes under some specific conditions. We then extend our definitions to situations involving multiple mediators and address research questions concerning the decomposition of the total effect when some mediators on the pathway from the treatment to the outcome are marginalized over. Connections to the counterfactual definitions of the effects are also made. Data coming from an encouragement design on students' attitude to visit museums in Florence, Italy, are reanalyzed. The estimates of the defined quantities are reported together with their standard errors to compute p-values and form confidence intervals.
翻译:本文参照二进制随机变数的递归性系统,对治疗的总体影响分为直接和间接影响进行调查,我们表明,对于单一调解人而言,对日志概率尺度所测量的边际影响如何可以写成为间接和直接影响的总和,加上在某些特定条件下消失的剩余术语;然后,我们将我们的定义扩大到涉及多个调解人的情况,并处理研究问题,即当一些调解人从治疗到结果的路径被排挤到边缘时,整体影响将分解的问题。 与这些影响的反事实定义也有联系。对学生访问意大利佛罗伦萨博物馆的态度的鼓励性设计所产生的数据进行了重新分析,对确定数量的估计连同计算p价值和形成信任间隔的标准错误一起报告。