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On some algorithms for estimation in Gaussian graphical models

Søren Højsgaard, Steffen L. Lauritzen

2024Biometrika17 citationsDOIOpen Access PDF

Abstract

Abstract In Gaussian graphical models, the likelihood equations must typically be solved iteratively. This paper investigates two algorithms: a version of iterative proportional scaling, which avoids inversion of large matrices, and an algorithm based on convex duality and operating on the covariance matrix by neighbourhood coordinate descent, which corresponds to the graphical lasso with zero penalty. For large, sparse graphs, the iterative proportional scaling algorithm appears feasible and has simple convergence properties. The algorithm based on neighbourhood coordinate descent is extremely fast and less dependent on sparsity, but needs a positive-definite starting value to converge. We provide an algorithm for finding such a starting value for graphs with low colouring number. As a consequence, we also obtain a simplified proof of existence of the maximum likelihood estimator in such cases.

Topics & Concepts

MathematicsEstimationAlgorithmGraphical modelGaussianStatisticsPhysicsQuantum mechanicsEconomicsManagementBayesian Modeling and Causal InferenceStatistical Methods and InferenceBayesian Methods and Mixture Models