Bayesian Inference for a Covariance Matrix
Open Access
- 1 December 1992
- journal article
- Published by Institute of Mathematical Statistics in The Annals of Statistics
- Vol. 20 (4) , 1669-1696
- https://doi.org/10.1214/aos/1176348885
Abstract
A flexible class of prior distributions is proposed, for the covariance matrix of a multivariate normal distribution, yielding much more general hierarchical and empirical Bayes smoothing and inference, when compared with a conjugate analysis involving an inverted Wishart distribution. A likelihood approximation is obtained for the matrix logarithm of the covariance matrix, via Bellman's iterative solution to a Volterra integral equation. Exact and approximate Bayesian, empirical and hierarchical Bayesian estimation and finite sample inference techniques are developed. Some risk and asymptotic frequency properties are investigated. A subset of the Project Talent American High School data is analyzed. Applications and extensions to multivariate analysis, including a generalized linear model for covariance matrices, are indicated.Keywords
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