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A novel high-order multivariate Markov model for spatiotemporal analysis with application to COVID-19 outbreak.

A M ElshehaweyZhengming Qian
Published in: Journal of the Korean Statistical Society (2023)
We propose a new strategy for analyzing the evolution of random phenomena over time and space simultaneously based on the high-order multivariate Markov chains. We develop a novel Markov model of order r for m chains consisting of s possible states to gather parsimony with realism. It can capture negative and positive associations among the chains with only a reduced number of parameters, r m 2 s 2 + 2 , remarkably lower than m s r m + 1 required for the full parameterized model. Our model privileges are enhanced by a Monte Carlo simulation experiment, besides application to analyze the spatial-temporal dynamics for the risk level of a recently global pandemic (COVID-19) outbreak in world health organization (WHO) regions for predicting the risk state of epidemiological prevalence and monitoring infection control.
Keyphrases
  • sars cov
  • coronavirus disease
  • risk factors
  • monte carlo