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Causal Inference Under Interference And Network Uncertainty

机译:干扰和网络不确定性的因果推断

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Classical causal and statistical inference methods typically assume the observed data consists of independent realizations. However, in many applications this assumption is inappropriate due to a network of dependences between units in the data. Methods for estimating causal effects have been developed in the setting where the structure of dependence between units is known exactly, but in practice there is often substantial uncertainty about the precise network structure. This is true, for example, in trial data drawn from vulnerable communities where social ties are difficult to query directly. In this paper we combine techniques from the structure learning and interference literatures in causal inference, proposing a general method for estimating causal effects under data dependence when the structure of this dependence is not known a priori. We demonstrate the utility of our method on synthetic datasets which exhibit network dependence.
机译:经典因果和统计推断方法通常假设观察到的数据包括独立的实现。然而,在许多应用中,由于数据之间的单元之间的依赖网络,这种假设是不合适的。用于估计因果效应的方法已经在完全已知的依赖性的结构中,但实际上通常存在关于精确网络结构的实质性不确定性。例如,这是真的,例如,在从易受攻击的社区中汲取的试验数据,社交领带很难直接查询。在本文中,我们将技术与因果推断中的结构学习和干扰文献中的技术相结合,提出了一种估计数据依赖性因果效应的一般方法,当该依赖性的结构不知道先验时。我们展示了我们对展示网络依赖的合成数据集的方法的效用。

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