When drawing causal inference from observational data, there is always concern about unmeasured confounding. One way to tackle this is to conduct a sensitivity analysis. One widely-used sensitivity analysis framework hypothesizes the existence of a scalar unmeasured confounder U and asks how the causal conclusion would change were U measured and included in the primary analysis. Works along this line often make various parametric assumptions on U, for the sake of mathematical and computational simplicity. In this article, we further this line of research by developing a valid sensitivity analysis that leaves the distribution of U unrestricted. Our semiparametric estimator has three desirable features compared to many existing methods in the literature. First, our method allows for a larger and more flexible family of models, and mitigates observable implications (Franks et al., 2019). Second, our methods work seamlessly with any primary analysis that models the outcome regression parametrically. Third, our method is easy to use and interpret. We construct both pointwise confidence intervals and confidence bands that are uniformly valid over a given sensitivity parameter space, thus formally accounting for unknown sensitivity parameters. We apply our proposed method on an influential yet controversial study of the causal relationship between war experiences and political activeness using observational data from Uganda.
翻译:在从观测数据中得出因果推断时,总是有人对未经测量的混乱感到关切。解决这一问题的方法之一是进行敏感度分析。一个广泛使用的敏感度分析框架假设存在一个非计量的混乱者U,并询问因果结论如何会改变U,并列入初级分析中。沿着这条线开展工作,往往为数学和计算简单起见,在U上作出各种参数假设。在本条中,我们通过进行有效的敏感度分析,使U的分布不受限制,来推进这一研究线。与文献中的许多现有方法相比,我们的半参数估测仪有三个可取的特征。首先,我们的方法允许一个规模更大、更灵活的模型组合,并减轻可观察的影响(Franks等人,2019年)。第二,我们的方法与任何主要分析,即模拟结果回归的偏差参数是完全一致的。第三,我们的方法很容易使用和解释。我们构建了对特定敏感度参数空间具有统一性的信任度和信任波段,从而对未知的敏感度参数进行正式核算。首先,我们的方法允许对未知的敏感度参数进行更大和更灵活的模型进行更灵活的计算,并减轻观察影响(Franks and the the the provial convial revial revial revial revial revial revial revial revial bevial bevial bevial beviius)。