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Time Series Deconfounder: Estimating Treatment Effects over Time in the Presence of Hidden Confounders

机译:时间序列DeconFounder:在隐藏混乱的存在下估算治疗效果随着时间的推移

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The estimation of treatment effects is a pervasive problem in medicine. Existing methods for estimating treatment effects from longitudinal observational data assume that there are no hidden confounders, an assumption that is not testable in practice and, if it does not hold, leads to biased estimates. In this paper, we develop the Time Series Deconfounder, a method that leverages the assignment of multiple treatments over time to enable the estimation of treatment effects in the presence of multi-cause hidden confounders. The Time Series Deconfounder uses a novel recurrent neural network architecture with multitask output to build a factor model over time and infer latent variables that render the assigned treatments conditionally independent; then, it performs causal inference using these latent variables that act as substitutes for the multi-cause unobserved confounders. We provide a theoretical analysis for obtaining unbiased causal effects of time-varying exposures using the Time Series Deconfounder. Using both simulated and real data we show the effectiveness of our method in deconfounding the estimation of treatment responses over time.
机译:治疗效果的估计是医学中的普遍存系。估算纵向观测数据的治疗效果的现有方法假设没有隐藏的混乱,假设在实践中不可测试,如果它不持有,则导致偏置估计。在本文中,我们开发了时间序列DeconFounder,一种方法随着时间的推移,利用多种治疗的方法来实现在多导致隐藏混杂物存在下进行治疗效果的估计。时间序列CodonFounder使用具有多任务输出的新型经常性神经网络架构,以构建因子模型随时间,并在有条件地独立地呈现指定的处理的潜在变量;然后,使用这些潜在的变量执行因果推断,该变量充当多导致不观察到的混杂器的替代品。我们提供了使用时间序列Codonfounder获得时变暴露的不偏不倚的因果影响的理论分析。使用模拟和实际数据,我们展示了我们在Deconfound估算治疗响应的估算中的有效性。

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