There is a growing literature on finding so-called optimal treatment rules, which are rules by which to assign treatment to individuals based on an individual's characteristics, such that a desired outcome is maximized. A related goal entails identifying individuals who are predicted to have a harmful indirect effect (the effect of treatment on an outcome through mediators) even in the presence of an overall beneficial effect of the treatment on the outcome. In some cases, the likelihood of a harmful indirect effect may outweigh a likely beneficial overall effect, and would be reason to caution against treatment for indicated individuals. We build on both the current mediation and optimal treatment rule literature to propose a method of identifying a subgroup for which the treatment effect through the mediator is harmful. Our approach is nonparametric, incorporates post-treatment variables that may confound the mediator-outcome relationship, and does not make restrictions on the distribution of baseline covariates, mediating variables (considered jointly), or outcomes. We apply the proposed approach to identify a subgroup of boys in the Moving to Opportunity housing voucher experiment who are predicted to have harmful indirect effects, though the average total effect is beneficial.
翻译:关于找到所谓的最佳治疗规则的文献越来越多,这种规则是根据个人特点对个人给予待遇的规则,这种规则使预期结果最大化;一个相关目标涉及确定预计会产生有害间接影响(通过调解人治疗的结果对结果的影响)的个人,即使治疗结果对结果产生总体的有利影响,在某些情况下,有害的间接影响的可能性可能大于可能产生的总体有利影响,并有理由告诫不要对被指名人进行治疗;我们以目前的调解和最佳治疗规则文献为基础,提出一种方法,确定通过调解人进行治疗的效果有害的分组;我们的方法是非对称性的,纳入可能混淆调解人-结果关系的后处理变数,不限制基线共变式的分配、介介质变数(共同考虑)或结果;我们采用拟议办法,在 " 走向机会 " 住房凭证试验中确定一个男孩分组,预测这些分组会产生有害的间接影响,尽管平均总效果是有益的。