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Causal Inference using Gaussian Processes with Structured Latent Confounders

机译:使用具有结构潜伏混淆的高斯过程的因果推断

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Latent confounders - unobserved variables that influence both treatment and outcome - can bias estimates of causal effects. In some cases, these confounders are shared across observations, e.g. all students taking a course are influenced by the course's difficulty in addition to any educational interventions they receive individually. This paper shows how to semiparametrically model latent confounders that have this structure and thereby improve estimates of causal effects. The key innovations are a hierarchical Bayesian model, Gaussian processes with structured latent confounders (GP-SLC), and a Monte Carlo inference algorithm for this model based on elliptical slice sampling. GP-SLC provides principled Bayesian uncertainty estimates of individual treatment effect with minimal assumptions about the functional forms relating confounders, covariates, treatment, and outcome. Finally, this paper shows GP-SLC is competitive with or more accurate than widely used causal inference techniques on three benchmark datasets, including the Infant Health and Development Program and a dataset showing the effect of changing temperatures on state-wide energy consumption across New England.
机译:潜伏混淆 - 影响治疗和结果的未观察变量 - 可以偏见因果效应的估计。在某些情况下,这些混乱者在观察中分享,例如,除了他们单独收到的任何教育干预措施之外,所有参加课程的学生都受到课程的影响。本文展示了如何进行具有这种结构的半抗七模型模型,从而改善因果效应的估计。关键创新是一个分层贝叶斯模型,具有结构化潜伏混淆器(GP-SLC)的高斯过程,以及基于椭圆形切片采样的该模型的蒙特卡罗推理算法。 GP-SLC为个体治疗效果提供了有关个体治疗效果的原则性的贝叶斯不确定性估计,其对功能形式有关混淆,协变量,治疗和结果的职能形式的最小假设。最后,本文显示了GP-SLC与三个基准数据集上的广泛使用的因果推断技术,包括婴儿健康和开发计划以及数据集,显示了在新英格兰跨越全全省能源消耗的影响。

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