Latent variable graphical model selection via convex optimization
Venkat Chandrasekaran, Pablo A. Parrilo, Alan S. Willsky

TL;DR
This paper introduces a convex optimization approach to identify latent variables and learn the structure of Gaussian graphical models from observed data, even in high-dimensional settings.
Contribution
It provides natural identifiability conditions and a tractable convex program combining sparsity and low-rank regularization for latent-variable Gaussian graphical models.
Findings
Consistently estimates the number of latent variables.
Recovers the graphical model structure among observed variables.
Applicable in high-dimensional regimes.
Abstract
Suppose we observe samples of a subset of a collection of random variables. No additional information is provided about the number of latent variables, nor of the relationship between the latent and observed variables. Is it possible to discover the number of latent components, and to learn a statistical model over the entire collection of variables? We address this question in the setting in which the latent and observed variables are jointly Gaussian, with the conditional statistics of the observed variables conditioned on the latent variables being specified by a graphical model. As a first step we give natural conditions under which such latent-variable Gaussian graphical models are identifiable given marginal statistics of only the observed variables. Essentially these conditions require that the conditional graphical model among the observed variables is sparse, while the effect…
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