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Simple Efficient Estimators of Treatment Effects in Randomized Trials Using Generalized Linear Models to Leverage Baseline Variables

机译:使用广义线性模型利用基线变量的随机试验中简单有效的治疗效果估算器

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摘要

Models, such as logistic regression and Poisson regression models, are often used to estimate treatment effects in randomized trials. These models leverage information in variables collected before randomization, in order to obtain more precise estimates of treatment effects. However, there is the danger that model misspecification will lead to bias. We show that certain easy to compute, model-based estimators are asymptotically unbiased even when the working model used is arbitrarily misspecified. Furthermore, these estimators are locally efficient. As a special case of our main result, we consider a simple Poisson working model containing only main terms; in this case, we prove the maximum likelihood estimate of the coefficient corresponding to the treatment variable is an asymptotically unbiased estimator of the marginal log rate ratio, even when the working model is arbitrarily misspecified. This is the log-linear analog of ANCOVA for linear models. Our results demonstrate one application of targeted maximum likelihood estimation.
机译:Logistic回归和Poisson回归模型等模型通常用于评估随机试验中的治疗效果。这些模型利用随机化之前收集的变量中的信息,以获得治疗效果的更精确估计。但是,存在模型规格不正确会导致偏差的危险。我们表明,即使随意使用了错误的工作模型,某些易于计算的,基于模型的估计量也是渐近无偏的。此外,这些估计量是局部有效的。作为我们主要结果的特例,我们考虑一个仅包含主要项的简单泊松工作模型。在这种情况下,即使工作模型被任意指定,我们也证明了与处理变量相对应的系数的最大似然估计是边际对数比率的渐近无偏估计。这是用于线性模型的ANCOVA的对数线性模拟。我们的结果证明了有针对性的最大似然估计的一种应用。

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