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Bayesian Estimation of Correlation Matrices of Longitudinal Data

Riddhi Pratim Ghosh, Bani K. Mallick, Mohsen Pourahmadi

2020Bayesian Analysis21 citationsDOIOpen Access PDF

Abstract

Estimation of correlation matrices is a challenging problem due to the notorious positive-definiteness constraint and high-dimensionality. Reparameterizing Cholesky factors of correlation matrices in terms of angles or hyperspherical coordinates where the angles vary freely in the range [0,π) has become popular in the last two decades. However, it has not been used in Bayesian estimation of correlation matrices perhaps due to lack of clear statistical relevance and suitable priors for the angles. In this paper, we show for the first time that for longitudinal data these angles are the inverse cosine of the semi-partial correlations (SPCs). This simple connection makes it possible to introduce physically meaningful selection and shrinkage priors on the angles or correlation matrices with emphasis on selection (sparsity) and shrinking towards longitudinal structure. Our method deals effectively with the positive-definiteness constraint in posterior computation. We compare the performance of our Bayesian estimation based on angles with some recent methods based on partial autocorrelations through simulation and apply the method to a data related to clinical trial on smoking.

Topics & Concepts

Cholesky decompositionPositive definitenessPrior probabilityMathematicsBayesian probabilityAlgorithmApplied mathematicsComputer scienceMathematical optimizationPositive-definite matrixStatisticsEigenvalues and eigenvectorsQuantum mechanicsPhysicsStatistical Methods and Bayesian InferenceStatistical Methods and InferenceAdvanced Statistical Methods and Models