Under-reported time-varying MINAR(1) process for modeling multivariate count series

Comput Stat Data Anal. 2023 Dec:188:107825. doi: 10.1016/j.csda.2023.107825. Epub 2023 Jul 26.

Abstract

A time-varying multivariate integer-valued autoregressive of order one (tvMINAR(1)) model is introduced for the non-stationary time series of correlated counts when under-reporting is likely present. A non-diagonal autoregression probability network is structured to preserve the cross-correlation of multivariate series, provide a necessary condition to ease model-fittings computations, and derive the full likelihood using the Viterbi algorithm. The motivating construction applies to fully under-reported counts that rely on a mixture presentation of the random thinning operator. Simulation studies are conducted to examine the proposed model, and the analysis of COVID-19 daily cases is accomplished to highlight its usefulness in applications. Finally, the comparison of models is presented using the posterior predictive checking method.

Keywords: 2020 MSC: 62M10; 60G07; 62M20; Binomial thinning operator; Cross-correlated time series; Forecasting; Random network model; Time-varying stochastic process.