AR Identification of Latent-Variable Graphical Models
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Peer-reviewed
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Abstract
The paper proposes an identification procedure for autoregressive Gaussian stationary stochastic processes under the assumption that the manifest (or observed) variables are nearly independent when conditioned on a limited number of latent (or hidden) variables. The method exploits the sparse plus low-rank decomposition of the inverse of the manifest spectral density and the efficient convex relaxations recently proposed for such decompositions.
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IEEE Transactions on Automatic Control
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0018-9286
1558-2523
1558-2523
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61
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IEEE
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