Literature DB >> 31402848

Bayesian Estimation of Causal Direction in Acyclic Structural Equation Models with Individual-specific Confounder Variables and Non-Gaussian Distributions.

Shohei Shimizu1, Kenneth Bollen2.   

Abstract

Several existing methods have been shown to consistently estimate causal direction assuming linear or some form of nonlinear relationship and no latent confounders. However, the estimation results could be distorted if either assumption is violated. We develop an approach to determining the possible causal direction between two observed variables when latent confounding variables are present. We first propose a new linear non-Gaussian acyclic structural equation model with individual-specific effects that are sometimes the source of confounding. Thus, modeling individual-specific effects as latent variables allows latent confounding to be considered. We then propose an empirical Bayesian approach for estimating possible causal direction using the new model. We demonstrate the effectiveness of our method using artificial and real-world data.

Entities:  

Keywords:  Bayesian networks; estimation of causal direction; latent confounding variables; non-Gaussianity; structural equation models

Year:  2014        PMID: 31402848      PMCID: PMC6688762     

Source DB:  PubMed          Journal:  J Mach Learn Res        ISSN: 1532-4435            Impact factor:   3.654


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