Bayesian variable selection for matrix autoregressive models

被引:0
|
作者
Alessandro Celani
Paolo Pagnottoni
Galin Jones
机构
[1] Marche Polytechnic University,Department of Economics and Social Sciences
[2] University of Insubria,Department of Economics
[3] University of Minnesota Twin Cities,School of Statistics
来源
Statistics and Computing | 2024年 / 34卷
关键词
Autoregressive models; Bayesian estimation; Matrix-valued time series; Maximum a posteriori probability; Stochastic search;
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摘要
A Bayesian method is proposed for variable selection in high-dimensional matrix autoregressive models which reflects and exploits the original matrix structure of data to (a) reduce dimensionality and (b) foster interpretability of multidimensional relationship structures. A compact form of the model is derived which facilitates the estimation procedure and two computational methods for the estimation are proposed: a Markov chain Monte Carlo algorithm and a scalable Bayesian EM algorithm. Being based on the spike-and-slab framework for fast posterior mode identification, the latter enables Bayesian data analysis of matrix-valued time series at large scales. The theoretical properties, comparative performance, and computational efficiency of the proposed model is investigated through simulated examples and an application to a panel of country economic indicators.
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