Acyclic Linear SEMs Obey the Nested Markov Property
Abstract
The conditional independence structure induced on the observed marginal distribution by a hidden variable directed acyclic graph (DAG) may be represented by a graphical model represented by mixed graphs called maximal ancestral graphs (MAGs). This model has a number of desirable properties, in particular the set of Gaussian distributions can be parameterized by viewing the graph as a path diagram. Models represented by MAGs have been used for causal discovery [22], and identification theory for causal effects [28]. In addition to ordinary conditional independence constraints, hidden variable DAGs also induce generalized independence constraints. These constraints form the nested Markov property [20]. We first show that acyclic linear SEMs obey this property. Further we show that a natural parameterization for all Gaussian distributions obeying the nested Markov property arises from a generalization of maximal ancestral graphs that we call maximal arid graphs (MArG). We show that every nested Markov model can be associated with a MArG; viewed as a path diagram this MArG parametrizes the Gaussian nested Markov model. This leads directly to methods for ML fitting and computing BIC scores for Gaussian nested models.
Cite
Text
Shpitser et al. "Acyclic Linear SEMs Obey the Nested Markov Property." Conference on Uncertainty in Artificial Intelligence, 2018.Markdown
[Shpitser et al. "Acyclic Linear SEMs Obey the Nested Markov Property." Conference on Uncertainty in Artificial Intelligence, 2018.](https://mlanthology.org/uai/2018/shpitser2018uai-acyclic/)BibTeX
@inproceedings{shpitser2018uai-acyclic,
title = {{Acyclic Linear SEMs Obey the Nested Markov Property}},
author = {Shpitser, Ilya and Evans, Robin J. and Richardson, Thomas S.},
booktitle = {Conference on Uncertainty in Artificial Intelligence},
year = {2018},
pages = {735-745},
url = {https://mlanthology.org/uai/2018/shpitser2018uai-acyclic/}
}