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Matrix autoregressive models: generalization and Bayesian estimation

Alessandro Celani, Paolo Pagnottoni

2023Studies in Nonlinear Dynamics and Econometrics13 citationsDOI

Abstract

Abstract The issue of modelling observations generated in matrix form over time is key in economics, finance and many domains of application. While it is common to model vectors of observations through standard vector time series analysis, original matrix-valued data often reflect different types of structures of time series observations which can be further exploited to model interdependencies. In this paper, we propose a novel matrix autoregressive model in a bilinear form which, while leading to a substantial dimensionality reduction and enhanced interpretability: (a) allows responses and potential covariates of interest to have different dimensions; (b) provides a suitable estimation procedure for matrix autoregression with lag structure; (c) facilitates the introduction of Bayesian estimators. We propose maximum likelihood and Bayesian estimation with Independent-Normal prior formulation, and study the theoretical properties of the estimators through simulated and real examples.

Topics & Concepts

Autoregressive modelEstimatorBayesian probabilityInterpretabilityMatrix (chemical analysis)GeneralizationComputer scienceSTAR modelBayesian vector autoregressionSeries (stratigraphy)EconometricsMathematicsAutoregressive integrated moving averageTime seriesStatisticsArtificial intelligenceBiologyComposite materialMathematical analysisPaleontologyMaterials scienceTensor decomposition and applicationsBlind Source Separation TechniquesStatistical Methods and Inference
Matrix autoregressive models: generalization and Bayesian estimation | Litcius