Literature DB >> 29789997

Non-Gaussian Methods for Causal Structure Learning.

Shohei Shimizu1,2.   

Abstract

Causal structure learning is one of the most exciting new topics in the fields of machine learning and statistics. In many empirical sciences including prevention science, the causal mechanisms underlying various phenomena need to be studied. Nevertheless, in many cases, classical methods for causal structure learning are not capable of estimating the causal structure of variables. This is because it explicitly or implicitly assumes Gaussianity of data and typically utilizes only the covariance structure. In many applications, however, non-Gaussian data are often obtained, which means that more information may be contained in the data distribution than the covariance matrix is capable of containing. Thus, many new methods have recently been proposed for using the non-Gaussian structure of data and inferring the causal structure of variables. This paper introduces prevention scientists to such causal structure learning methods, particularly those based on the linear, non-Gaussian, acyclic model known as LiNGAM. These non-Gaussian data analysis tools can fully estimate the underlying causal structures of variables under assumptions even in the presence of unobserved common causes. This feature is in contrast to other approaches. A simulated example is also provided.

Keywords:  Causal structure discovery; Non-Gaussianity; Observational data; Structural causal models

Mesh:

Year:  2019        PMID: 29789997     DOI: 10.1007/s11121-018-0901-x

Source DB:  PubMed          Journal:  Prev Sci        ISSN: 1389-4986


  6 in total

1.  Estimating mutual information.

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

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Journal:  J Mach Learn Res       Date:  2014-08       Impact factor: 3.654

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Journal:  PLoS One       Date:  2012-11-30       Impact factor: 3.240

Review 6.  Causal discovery and inference: concepts and recent methodological advances.

Authors:  Peter Spirtes; Kun Zhang
Journal:  Appl Inform (Berl)       Date:  2016-02-18
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Authors:  Yoshihiko Raita; Carlos A Camargo; Liming Liang; Kohei Hasegawa
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