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Estimating Causal Effects Using Weighting-Based Estimators

机译:使用加权估算器估算因果效应

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Causal effect identification is one of the most prominent and well-understood problems in causal inference. Despite the generality and power of the results developed so far, there are still challenges in their applicability to practical settings, arguably due to the finitude of the samples. Simply put, there is a gap between causal effect identification and estimation. One popular setting in which sample-efficient estimators from finite samples exist is when the celebrated back-door condition holds. In this paper, we extend weighting-based methods developed for the back-door case to more general settings, and develop novel machinery for estimating causal effects using the weighting-based method as a building block. We derive graphical criteria under which causal effects can be estimated using this new machinery and demonstrate the effectiveness of the proposed method through simulation studies.
机译:因果效应识别是因果推断中最突出和最受理解的问题之一。 尽管迄今为止发展的成果的一般性和力量,但由于样品的精力,他们对实际环境的适用性仍然存在挑战。 简单地说,因果效应识别和估计之间存在差距。 当庆祝的后门条件保持时,存在来自有限样本的样本有效估计的流行设置。 在本文中,我们扩展了在更一般的设置中为后门情况开发的基于加权的方法,以及使用基于加权的方法作为构建块来开发用于估算因果效果的新机器。 我们推出了使用这款新机器可以估计了因果效应的图形标准,并通过模拟研究证明了所提出的方法的有效性。

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