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Additive autoregressive models for matrix valued time series

Hong‐Fan Zhang

2023Journal of Time Series Analysis10 citationsDOI

Abstract

In this article, we develop additive autoregressive models (Add‐ARM) for the time series data with matrix valued predictors. The proposed models assume separable row, column and lag effects of the matrix variables, attaining stronger interpretability when compared with existing bilinear matrix autoregressive models. We utilize the Gershgorin's circle theorem to impose some certain conditions on the parameter matrices, which make the underlying process strictly stationary. We also introduce the alternating least squares estimation method to solve the involved equality constrained optimization problems. Asymptotic distributions of the parameter estimators are derived. In addition, we employ hypothesis tests to run diagnostics on the parameter matrices. The performance of the proposed models and methods is further demonstrated through simulations and real data analysis.

Topics & Concepts

Autoregressive modelMathematicsEstimatorSeries (stratigraphy)InterpretabilityApplied mathematicsMatrix (chemical analysis)STAR modelSETARBilinear interpolationTime seriesNonlinear autoregressive exogenous modelAutoregressive integrated moving averageMathematical optimizationStatisticsComputer scienceComposite materialBiologyMaterials scienceMachine learningPaleontologyStatistical Methods and InferenceControl Systems and IdentificationStatistical and numerical algorithms