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Regression analysis of zero-inflated time-series counts: application to air pollution related emergency room visit data
Authors:M Tariqul Hasan  Gary Sneddon  Renjun Ma
Institution:1. Department of Mathematics and Statistics , University of New Brunswick , Fredericton , NB , E3B 5A3 , Canada;2. Department of Mathematics and Computer Sciences , Mount Saint Vincent University , Halifax , NS , B3M 2J6 , Canada
Abstract:Time-series count data with excessive zeros frequently occur in environmental, medical and biological studies. These data have been traditionally handled by conditional and marginal modeling approaches separately in the literature. The conditional modeling approaches are computationally much simpler, whereas marginal modeling approaches can link the overall mean with covariates directly. In this paper, we propose new models that can have conditional and marginal modeling interpretations for zero-inflated time-series counts using compound Poisson distributed random effects. We also develop a computationally efficient estimation method for our models using a quasi-likelihood approach. The proposed method is illustrated with an application to air pollution-related emergency room visits. We also evaluate the performance of our method through simulation studies.
Keywords:compound Poisson distribution  Poisson mixed models  time-series count responses  excessive zeros  quasi-likelihood  air pollution
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