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Analyzing multiple vector autoregressions through matrix-variate normal distribution with two covariance matrices
Authors:Nuttanan Wichitaksorn
Institution:1. Mathematical Sciences Department, Auckland University of Technology, Auckland, New Zealand;2. School of Mathematics and Statistics, University of Canterbury, Christchurch, New Zealand;3. Thailand Development Research Institute, Bangkok, Thailandnuttanan.wichitaksorn@aut.ac.nz
Abstract:Abstract

This article proposes a new approach to analyze multiple vector autoregressive (VAR) models that render us a newly constructed matrix autoregressive (MtAR) model based on a matrix-variate normal distribution with two covariance matrices. The MtAR is a generalization of VAR models where the two covariance matrices allow the extension of MtAR to a structural MtAR analysis. The proposed MtAR can also incorporate different lag orders across VAR systems that provide more flexibility to the model. The estimation results from a simulation study and an empirical study on macroeconomic application show favorable performance of our proposed models and method.
Keywords:Markov chain Monte Carlo  multivariate analysis  matrix-variate normal distribution  autoregression
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