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Estimating linear causality in the presence of latent variables

机译:在存在潜在变量的存在下估算线性因果关系

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Learning causality from data is known as the causal discovery problem, and it is an important and relatively new field. In many applications, there often exist latent variables, if such latent variables are completely ignored, which can lead to the estimation results seriously biased. In this paper, a method of combining exploratory factor analysis and path analysis (EFA-PA) is proposed to infer the causality in the presence of latent variables. Our method expands latent variables as well as their linear causal relationships with observed variables, which enhances the accuracy of causal models. Such model can be thought of as the simplest possible causal models for continuous data. The EFA-PA is very similar to that of structural equation model, but the theoretical model established by the structural equation model needs to be modified in the process of data fitting until the ideal model is established.The model gained by EFA-PA not only avoids subjectivity but also reduces estimation complexity. It is found that the EFA-PA estimation model is superior to the other models. EFA-PA can provides a basis for the correct estimation of the causal relationship between the observed variables in the presence of latent variables. The experiment shows that EFA-PA is better than the structural equation model.
机译:从数据学习因果关系被称为因果发现问题,这是一个重要且相对较新的领域。在许多应用中,如果这种潜在变量完全忽略了这种潜变量,那么通常存在潜在的变量,这可能导致估计结果严重偏见。在本文中,提出了一种组合探索性因子分析和路径分析(EFA-PA)的方法,以推断出存在潜在变量的因果关系。我们的方法扩展了潜在变量以及观察到的变量的线性因果关系,这提高了因果模型的准确性。这种模型可以被认为是连续数据的最简单的因果模型。 EFA-PA非常类似于结构方程模型的那种,但是需要在数据配件过程中修改结构方程模型的理论模型,直到建立理想模型。由EFA-PA获得的模型不仅避免主观性,但也降低了估计复杂性。结果发现,EFA-PA估计模型优于其他模型。 EFA-PA可以为在存在潜在变量存在下正确估计观察变量之间的因果关系的基础。实验表明,EFA-PA优于结构方程模型。

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