title | abstract | layout | series | publisher | issn | id | month | tex_title | firstpage | lastpage | page | order | cycles | bibtex_editor | editor | bibtex_author | author | date | note | address | container-title | volume | genre | issued | extras | ||||||||||||||||||||||||||||||||||||
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Discovering cyclic causal models by independent components analysis |
We generalize Shimizu et al’s (2006) ICA-based approach for discovering linear non-Gaussian acyclic (LiNGAM) Structural Equation Models (SEMs) from causally sufficient, continuous-valued observational data. By relaxing the assumption that the generating SEM’s graph is acyclic, we solve the more general problem of linear non-Gaussian (LiNG) SEM discovery. LiNG discovery algorithms output the distribution equivalence class of SEMs which, in the large sample limit, represents the population distribution. We apply a LiNG discovery algorithm to simulated data. Finally, we give sufficient conditions under which only one of the SEMs in the output class is "stable". |
inproceedings |
Proceedings of Machine Learning Research |
PMLR |
2640-3498 |
lacerda08a |
0 |
Discovering cyclic causal models by independent components analysis |
366 |
374 |
366-374 |
366 |
false |
McAllester, David A. and Myllym{"a}ki, Petri |
|
Lacerda, Gustavo and Spirtes, Peter and Ramsey, Joseph and Hoyer, Patrik O. |
|
2008-07-09 |
Reissued by PMLR on 30 October 2024. |
Proceedings of the 24th Conference on Uncertainty in Artificial Intelligence |
R6 |
inproceedings |
|