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Bayesian Inference on Multivariate Normal Covariance and Precision Matrices in a Star-Shaped Model with Missing Data
Authors:Xiaoqian Sun  Dongchu Sun  Zhuoqiong He
Institution:1. Department of Mathematical Sciences , Clemson University , Clemson, South Carolina, USA xsun@clemson.edu;3. Department of Statistics , University of Missouri , Columbia, Missouri, USA
Abstract:In this article, we study Bayesian estimation for the covariance matrix Σ and the precision matrix Ω (the inverse of the covariance matrix) in the star-shaped model with missing data. Based on a Cholesky-type decomposition of the precision matrix Ω = ΨΨ, where Ψ is a lower triangular matrix with positive diagonal elements, we develop the Jeffreys prior and a reference prior for Ψ. We then introduce a class of priors for Ψ, which includes the invariant Haar measures, Jeffreys prior, and reference prior. The posterior properties are discussed and the closed-form expressions for Bayesian estimators for the covariance matrix Σ and the precision matrix Ω are derived under the Stein loss, entropy loss, and symmetric loss. Some simulation results are given for illustration.
Keywords:Covariance matrix  Entropy loss  Jeffreys prior  Missing data  Precision matrix  Reference prior  Star-shaped model  Stein loss  Symmetric loss
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