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Estimating Individual Treatment Effect in Observational Data Using Random Forest Methods

机译:使用随机森林方法估计观测数据中的个体处理效果

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摘要

Estimation of individual treatment effect in observational data is complicated due to the challenges of confounding and selection bias. A useful inferential framework to address this is the counterfactual (potential outcomes) model, which takes the hypothetical stance of asking what if an individual had received both treatments. Making use of random forests (RF) within the counterfactual framework we estimate individual treatment effects by directly modeling the response. We find that accurate estimation of individual treatment effects is possible even in complex heterogenous settings but that the type of RF approach plays an important role in accuracy. Methods designed to be adaptive to confounding, when used in parallel with out-of-sample estimation, do best. One method found to be especially promising is counterfactual synthetic forests. We illustrate this new methodology by applying it to a large comparative effectiveness trial, Project Aware, to explore the role drug use plays in sexual risk. The analysis reveals important connections between risky behavior, drug usage, and sexual risk.
机译:由于混杂和选择偏差的挑战,在观察数据中估计个体治疗效果非常复杂。解决这个问题的一个有用的推论框架是反事实(潜在结果)模型,该模型采用假设的立场,询问一个人是否同时接受了两种治疗。通过在反事实框架内使用随机森林(RF),我们可以通过直接对响应进行建模来估计各个处理的效果。我们发现,即使在复杂的异构环境中,也可以对单个治疗效果进行准确估计,但是RF方法的类型在准确性中起着重要作用。设计用于适应混淆的方法与样本外估计并行使用时,效果最佳。被发现特别有前途的一种方法是反事实的人工林。我们将这种新方法应用于大型比较有效性试验Project Aware,以探讨吸毒在性风险中的作用,从而说明这一新方法。分析揭示了危险行为,药物使用和性风险之间的重要联系。

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