Non-Gaussian Methods for Causal Structure Learning

被引:13
|
作者
Shimizu, Shohei [1 ,2 ]
机构
[1] Shiga Univ, Fac Data Sci, Hikone, Japan
[2] RIKEN Ctr Adv Intelligence Project, Tokyo, Japan
关键词
Causal structure discovery; Observational data; Non-Gaussianity; Structural causal models; MODELS;
D O I
10.1007/s11121-018-0901-x
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
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.
引用
收藏
页码:431 / 441
页数:11
相关论文
共 50 条
  • [21] Sparse Bayesian Learning for non-Gaussian sources
    Porter, Richard
    Tadic, Vladislav
    Achim, Achim
    [J]. DIGITAL SIGNAL PROCESSING, 2015, 45 : 2 - 12
  • [22] Bimetric structure formation: Non-Gaussian predictions
    Magueijo, Joao
    Noller, Johannes
    Piazza, Federico
    [J]. PHYSICAL REVIEW D, 2010, 82 (04):
  • [23] NON-GAUSSIAN TURBULENCE FIELD AS A DISSIPATIVE STRUCTURE
    SANADA, T
    [J]. JOURNAL OF THE PHYSICAL SOCIETY OF JAPAN, 1991, 60 (09) : 2951 - 2959
  • [24] Testability of Instrumental Variables in Linear Non-Gaussian Acyclic Causal Models
    Xie, Feng
    He, Yangbo
    Geng, Zhi
    Chen, Zhengming
    Hou, Ru
    Zhang, Kun
    [J]. ENTROPY, 2022, 24 (04)
  • [25] Causal Discovery of Linear Non-Gaussian Acyclic Model with Small Samples
    Xie, Feng
    Cai, Ruichu
    Zeng, Yan
    Hao, Zhifeng
    [J]. INTELLIGENCE SCIENCE AND BIG DATA ENGINEERING: BIG DATA AND MACHINE LEARNING, PT II, 2019, 11936 : 381 - 393
  • [26] Sparse estimation of Linear Non-Gaussian Acyclic Model for Causal Discovery
    Harada, Kazuharu
    Fujisawa, Hironori
    [J]. NEUROCOMPUTING, 2021, 459 : 223 - 233
  • [27] Pairwise Measures of Causal Direction in Linear Non-Gaussian Acyclic Model
    Hyvarinen, Aapo
    [J]. PROCEEDINGS OF 2ND ASIAN CONFERENCE ON MACHINE LEARNING (ACML2010), 2010, 13 : 1 - 16
  • [28] Gaussian and non-Gaussian statistics
    Pawelec, JJ
    [J]. 1997 INTERNATIONAL SYMPOSIUM ON ELECTROMAGNETIC COMPATIBILITY, PROCEEDINGS, 1997, : 475 - 479
  • [29] Non-Gaussian Component Analysis using Entropy Methods
    Goyal, Navin
    Shetty, Abhishek
    [J]. PROCEEDINGS OF THE 51ST ANNUAL ACM SIGACT SYMPOSIUM ON THEORY OF COMPUTING (STOC '19), 2019, : 840 - 851
  • [30] Approximate methods for explicit calculations of non-Gaussian moments
    Hristopulos, DT
    [J]. STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT, 2006, 20 (04) : 278 - 290