弱混杂下的近似因果效应识别

Ziwei Jiang, Lai Wei, M. Kocaoglu
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引用次数: 0

摘要

在只有观测数据的情况下,许多研究人员对因果效应估计进行了研究。健全和完整的算法已经开发用于点估计可识别的因果查询。对于不可识别的因果查询,研究人员开发了多项式程序来估计因果效应的紧界。然而,对于具有大支持大小的变量,这些在计算上难以优化。在本文中,我们分析了“弱混淆”对因果估计的影响。更具体地说,假设导致查询无法识别的未观察到的混杂因素具有小熵,我们提出了一个有效的线性程序来推导因果效应的上界和下界。我们证明了我们的界限是一致的,因为当未观察到的混杂因素的熵趋于零时,上界和下界之间的差距消失了。最后,我们进行了综合和真实的数据模拟,将我们的边界与现有工作中不包含此类熵约束的边界进行了比较,并表明我们的边界对于具有弱混杂因素的设置更为严格。
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Approximate Causal Effect Identification under Weak Confounding
Causal effect estimation has been studied by many researchers when only observational data is available. Sound and complete algorithms have been developed for pointwise estimation of identifiable causal queries. For non-identifiable causal queries, researchers developed polynomial programs to estimate tight bounds on causal effect. However, these are computationally difficult to optimize for variables with large support sizes. In this paper, we analyze the effect of"weak confounding"on causal estimands. More specifically, under the assumption that the unobserved confounders that render a query non-identifiable have small entropy, we propose an efficient linear program to derive the upper and lower bounds of the causal effect. We show that our bounds are consistent in the sense that as the entropy of unobserved confounders goes to zero, the gap between the upper and lower bound vanishes. Finally, we conduct synthetic and real data simulations to compare our bounds with the bounds obtained by the existing work that cannot incorporate such entropy constraints and show that our bounds are tighter for the setting with weak confounders.
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