Additive Matrix Integer-Valued Autoregressive Model
AFBytes Brief
The paper introduces an additive matrix integer-valued autoregressive model. It addresses specific structures in count-valued matrix time series. The approach extends existing autoregressive frameworks for multivariate integer data.
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Advanced statistical methods can eventually support better forecasting in economic and health data applications.
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