Convergence Properties of Kronecker Graphical Lasso Algorithms
Theodoros Tsiligkaridis, Alfred O. Hero III, Shuheng Zhou

TL;DR
This paper analyzes the convergence and accuracy of Kronecker graphical lasso algorithms for estimating sparse covariance matrices with Kronecker structure, demonstrating faster convergence than previous methods.
Contribution
It provides theoretical convergence guarantees and high-dimensional rates for KGlasso, extending prior algorithms to sparse Kronecker covariance estimation.
Findings
KGlasso iterates converge to a local maximum.
High-dimensional convergence rates are derived.
KGlasso outperforms Glasso and FF in asymptotic convergence.
Abstract
This paper studies iteration convergence of Kronecker graphical lasso (KGLasso) algorithms for estimating the covariance of an i.i.d. Gaussian random sample under a sparse Kronecker-product covariance model and MSE convergence rates. The KGlasso model, originally called the transposable regularized covariance model by Allen ["Transposable regularized covariance models with an application to missing data imputation," Ann. Appl. Statist., vol. 4, no. 2, pp. 764-790, 2010], implements a pair of penalties on each Kronecker factor to enforce sparsity in the covariance estimator. The KGlasso algorithm generalizes Glasso, introduced by Yuan and Lin ["Model selection and estimation in the Gaussian graphical model," Biometrika, vol. 94, pp. 19-35, 2007] and Banerjee ["Model selection through sparse maximum likelihood estimation for multivariate Gaussian or binary data," J. Mach. Learn.…
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