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IJAR
2008

Estimation of causal effects using linear non-Gaussian causal models with hidden variables

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Estimation of causal effects using linear non-Gaussian causal models with hidden variables
The task of estimating causal effects from non-experimental data is notoriously difficult and unreliable. Nevertheless, precisely such estimates are commonly required in many fields including economics and social science, where controlled experiments are often impossible. Linear causal models (structural equation models), combined with an implicit normality (Gaussianity) assumption on the data, provide a widely used framework for this task. We have recently described how non-Gaussianity in the data can be exploited for estimating causal effects. In this paper we show that, with non-Gaussian data, causal inference is possible even in the presence of hidden variables (unobserved confounders), even when the existence of such variables is unknown a priori. Thus, we provide a comprehensive and complete framework for the estimation of causal effects between the observed variables in the linear, non-Gaussian domain. Numerical simulations demonstrate the practical implementation of the propos...
Patrik O. Hoyer, Shohei Shimizu, Antti J. Kerminen
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2008
Where IJAR
Authors Patrik O. Hoyer, Shohei Shimizu, Antti J. Kerminen, Markus Palviainen
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