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Learning Linear Non-Gaussian Causal Models in the Presence of Latent Variables

机译:在存在潜在变量的情况下学习线性非高斯因果模型

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We consider the problem of learning causal models from observational data generated by linear non-Gaussian acyclic causal models with latent variables. Without considering the effect of latent variables, the inferred causal relationships among the observed variables are often wrong. Under faithfulness assumption, we propose a method to check whether there exists a causal path between any two observed variables. From this information, we can obtain the causal order among the observed variables. The next question is whether the causal effects can be uniquely identified as well. We show that causal effects among observed variables cannot be identified uniquely under mere assumptions of faithfulness and non-Gaussianity of exogenous noises. However, we are able to propose an efficient method that identifies the set of all possible causal effects that are compatible with the observational data. We present additional structural conditions on the causal graph under which causal effects among observed variables can be determined uniquely. Furthermore, we provide necessary and sufficient graphical conditions for unique identification of the number of variables in the system. Experiments on synthetic data and real-world data show the effectiveness of our proposed algorithm for learning causal models.
机译:我们考虑与潜在变量的线性非高斯无循环因果模型产生的观察数据的学习因果模型的问题。在不考虑潜在变量的影响,观察变量中的推断因果关系通常是错误的。在忠诚的假设下,我们提出了一种方法来检查是否存在任何两个观察到的变量之间的因果路径。根据这些信息,我们可以获得观察到的变量中的因果顺序。下一个问题是也可以唯一识别因果效应。我们表明,在仅仅在外源噪音的忠诚和非高斯的假设下,无法识别观测变量之间的因果效果。但是,我们能够提出一种有效的方法,该方法识别与观察数据兼容的所有可能因果效果集。我们在因果图上给出了额外的结构条件,在该因果图下可以唯一地确定观察变量之间的因果效应。此外,我们为系统中的变量数量的唯一识别提供必要和充分的图形条件。合成数据和现实世界数据的实验表明了我们提出的学习因果模型算法的有效性。

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