Bayesian Regularization for Graphical Models with Unequal Shrinkage
We consider a Bayesian framework for estimating a high-dimensional sparse precision matrix, in which adaptive shrinkage and sparsity are induced by a mixture of Laplace priors. Besides discussing our formulation from the Bayesian standpoint, we investigate the MAP (maximum a posteriori) estimator fr...
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Zusammenfassung: | We consider a Bayesian framework for estimating a high-dimensional sparse
precision matrix, in which adaptive shrinkage and sparsity are induced by a
mixture of Laplace priors. Besides discussing our formulation from the Bayesian
standpoint, we investigate the MAP (maximum a posteriori) estimator from a
penalized likelihood perspective that gives rise to a new non-convex penalty
approximating the $\ell_0$ penalty. Optimal error rates for estimation
consistency in terms of various matrix norms along with selection consistency
for sparse structure recovery are shown for the unique MAP estimator under mild
conditions. For fast and efficient computation, an EM algorithm is proposed to
compute the MAP estimator of the precision matrix and (approximate) posterior
probabilities on the edges of the underlying sparse structure. Through
extensive simulation studies and a real application to a call center data, we
have demonstrated the fine performance of our method compared with existing
alternatives. |
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DOI: | 10.48550/arxiv.1805.02257 |