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On the Identifiability and Estimation of Functional Causal Models in the Presence of Outcome-Dependent Selection

机译:关于依赖于结果选择的功能因果模型的可识别性和估计

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We study the identifiability and estimation of functional causal models under selection bias, with a focus on the situation where the selection depends solely on the effect variable, which is known as outcome-dependent selection. We address two questions of identifiability: the identifiability of the causal direction between two variables in the presence of selection bias, and, given the causal direction, the identifiability of the model with outcome-dependent selection. Regarding the first, we show that in the framework of post-nonlinear causal models, once outcome-dependent selection is properly modeled, the causal direction between two variables is generically identifiable; regarding the second, we identify some mild conditions under which an additive noise causal model with outcome-dependent selection is to a large extent identifiable. We also propose two methods for estimating an additive noise model from data that are generated with outcome-dependent selection.
机译:我们研究了选择偏差下的功能因果模型的可识别性和估计,重点是选择依赖于效果变量的情况,这被称为结果依赖性选择。我们解决了两个标识性问题:在选择偏差存在下两个变量之间的因果方向的可识别性,以及给出因果方向,模型的可依赖性选择的可识别性。关于第一个,我们表明,在非线性因果模型的框架中,一旦正确建模了结果依赖的选择,两个变量之间的因果方向就在一起识别;关于第二,我们识别一些温和条件,其中具有结果依赖性选择的添加剂噪声因果模型在很大程度上是可识别的。我们还提出了两种方法,用于估计从依赖于结果选择生成的数据的添加性噪声模型。

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