Robust clustering of COVID-19 cases across US counties using mixtures of asymmetric time series models with time varying and freely indexed covariates

JOURNAL OF APPLIED STATISTICS(2023)

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Abstract
In this paper, we develop a mixture of autoregressive (MoAR) process model with time varying and freely indexed covariates under the flexible class of two-piece distributions using the scale mixtures of normal (TP-SMN) family. This novel family of time series (TP-SMN-MoAR) models was used to examine flexible and robust clustering of reported cases of Covid-19 across 313 counties in the U.S. The TP-SMN distributions allow for symmetrical/ asymmetrical distributions as well as heavy-tailed distributions providing for flexibility to handle outliers and complex data. Developing a suitable hierarchical representation of the TP-SMN family enabled the construction of a pseudo-likelihood function to derive the maximum pseudo-likelihood estimates via an EM-type algorithm.
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Key words
EM-algorithm, covariates, mixture of autoregressive models, model-based clustering, scale mixtures of normal distributions, two-piece distributions
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