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首页> 外文期刊>Communications in Statistics. B, Simulation and Computation >The Performance of Two Data-Generation Processes for Data with Specified Marginal Treatment Odds Ratios
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The Performance of Two Data-Generation Processes for Data with Specified Marginal Treatment Odds Ratios

机译:具有指定边际处理几率的数据的两个数据生成过程的性能

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摘要

Monte Carlo simulation methods are increasingly being used to evaluate the property of statistical estimators in a variety of settings. The utility of these methods depends upon the existence of an appropriate data-generating process. Observational studies are increasingly being used to estimate the effects of exposures and interventions on outcomes. Conventional regression models allow for the estimation of conditional or adjusted estimates of treatment effects. There is an increasing interest in statistical methods for estimating marginal or average treatment effects. However, in many settings, conditional treatment effects can differ from marginal treatment effects. Therefore, existing data-generating processes for conditional treatment effects are of little use in assessing the performance of methods for estimating marginal treatment effects. In the current study, we describe and evaluate the performance of two different data-generation processes for generating data with a specified marginal odds ratio. The first process is based upon computing Taylor Series expansions of the probabilities of success for treated and untreated subjects. The expansions are then integrated over the distribution of the random variables to determine the marginal probabilities of success for treated and untreated subjects. The second process is based upon an iterative process of evaluating marginal odds ratios using Monte Carlo integration. The second method was found to be computationally simpler and to have superior performance compared to the first method.
机译:蒙特卡洛模拟方法越来越多地用于评估各种设置中统计估计器的属性。这些方法的实用性取决于是否存在适当的数据生成过程。越来越多的观察性研究被用来估计暴露和干预对结果的影响。常规回归模型允许对治疗效果进行条件或调整后的估计。估计边缘或平均治疗效果的统计方法越来越受到关注。但是,在许多情况下,条件治疗效果可能与边际治疗效果不同。因此,现有的用于条件治疗效果的数据生成过程很少用于评估估计边缘治疗效果的方法的性能。在当前的研究中,我们描述和评估了两种不同的数据生成过程在指定边际优势率下生成数据的性能。第一个过程基于对已治疗和未治疗受试者的成功概率的泰勒级数展开式的计算。然后,在随机变量的分布上对扩展进行积分,以确定已治疗和未治疗受试者成功的边际概率。第二个过程基于使用蒙特卡洛积分评估边际优势比的迭代过程。与第二种方法相比,发现第二种方法在计算上更简单并且具有更高的性能。

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