Faithfulness of Probability Distributions and Graphs
Abstract
A main question in graphical models and causal inference is whether, given a probability distribution $P$ (which is usually an underlying distribution of data), there is a graph (or graphs) to which $P$ is faithful. The main goal of this paper is to provide a theoretical answer to this problem. We work with general independence models, which contain probabilistic independence models as a special case. We exploit a generalization of ordering, called preordering, of the nodes of (mixed) graphs. This allows us to provide sufficient conditions for a given independence model to be Markov to a graph with the minimum possible number of edges, and more importantly, necessary and sufficient conditions for a given probability distribution to be faithful to a graph. We present our results for the general case of mixed graphs, but specialize the definitions and results to the better-known subclasses of undirected (concentration) and bidirected (covariance) graphs as well as directed acyclic graphs.
Cite
Text
Sadeghi. "Faithfulness of Probability Distributions and Graphs." Journal of Machine Learning Research, 2017.Markdown
[Sadeghi. "Faithfulness of Probability Distributions and Graphs." Journal of Machine Learning Research, 2017.](https://mlanthology.org/jmlr/2017/sadeghi2017jmlr-faithfulness/)BibTeX
@article{sadeghi2017jmlr-faithfulness,
title = {{Faithfulness of Probability Distributions and Graphs}},
author = {Sadeghi, Kayvan},
journal = {Journal of Machine Learning Research},
year = {2017},
pages = {1-29},
volume = {18},
url = {https://mlanthology.org/jmlr/2017/sadeghi2017jmlr-faithfulness/}
}