In many observational studies in social science and medicine, individuals are connected in ways that affect the adoption and efficacy of interventions. One individual's treatment and attributes may affect another individual's treatment and outcome. In particular, this violates the commonly made stable unit treatment value assumption (SUTVA). Interference is often heterogeneous, and an individual's outcome is not only affected by how many, but also which, neighbors or connections are treated. In this paper, we propose a flexible framework for heterogeneous partial interference that partitions units into subsets based on observables. We allow interactions to be heterogeneous across subsets, but homogeneous for individuals within a subset. In this framework, we propose a class of estimators for heterogeneous direct and spillover effects from observational data that are shown to be doubly robust, asymptotically normal, and semiparametric efficient. In addition, we discuss a bias-variance tradeoff between robustness to heterogeneous interference and estimation efficiency. We further propose consistent matching-based variance estimators and hypothesis tests to determine the appropriate specification of interference structure. We apply our methods to the Add Health data and find that regular alcohol consumption exhibits negative effects on academic performance, but the magnitude of effect varies by gender and friends' alcohol consumption.
翻译:在社会科学和医学的许多观察研究中,个人的联系方式影响到干预的采纳和效果,一个人的治疗和属性可能影响到另一个人的治疗和结果,特别是,这违反了通常稳定的单位治疗价值假设(SUTVA),干涉往往各异,个人的结果不仅受到数量的影响,而且受到对不同干扰和估计效率的强力之间的偏差取舍。我们在此文件中提议一个灵活的框架,将单位分割成基于观察的子集;我们允许各子集之间的相互作用,但个人在子集中的同质性。在这个框架中,我们提出一组关于观测数据产生的不同直接效应和溢出效应的估测数据,显示这些数据具有双倍的强度、单一的正常性和半偏差效率。此外,我们讨论对差异干扰和估计效率的强性之间的偏差取舍。我们进一步提议一个基于匹配的差异估计器和假设测试器,以确定干预结构的适当规格。我们用我们的方法来添加健康数据,并发现定期酒精消费对学术表现的负面作用,但因性别而有所不同。