Journal article
Identifiability of directed Gaussian graphical models with one latent source
Dennis Leung, Mathias Drton, Hisayuki Hara
Electronic Journal of Statistics | Institute of Mathematical Statistics | Published : 2016
DOI: 10.1214/16-ejs1111
Abstract
We study parameter identifiability of directed Gaussian graphical models with one latent variable. In the scenario we consider, the latent variable is a confounder that forms a source node of the graph and is a parent to all other nodes, which correspond to the observed variables. We give a graphical condition that is sufficient for the Jacobian matrix of the parametrization map to be full rank, which entails that the parametrization is generically finite-to-one, a fact that is sometimes also referred to as local identifiability. We also derive a graphical condition that is necessary for such identifiability. Finally, we give a condition under which generic parameter identifiability can be d..
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Awarded by U.S. National Science Foundation
Awarded by U.S. National Security Agency
Awarded by Grants-in-Aid for Scientific Research
Awarded by Direct For Mathematical & Physical Scien; Division Of Mathematical Sciences
Funding Acknowledgements
We thank Robin Graham and Sandor Kovacs for helpful comments on the proof of Lemma 1.1. This work was partially supported by the U.S. National Science Foundation (DMS-1305154), the U.S. National Security Agency (H98230-14-1-0119), and the University of Washington's Royalty Research Fund. The United States Government is authorized to reproduce and distribute reprints.