Likelihood estimation for longitudinal zero-inflated power series regression models
E. Bahrami Samani,
Y. Amirian and
M. Ganjali
Journal of Applied Statistics, 2012, vol. 39, issue 9, 1965-1974
Abstract:
In this paper, a zero-inflated power series regression model for longitudinal count data with excess zeros is presented. We demonstrate how to calculate the likelihood for such data when it is assumed that the increment in the cumulative total follows a discrete distribution with a location parameter that depends on a linear function of explanatory variables. Simulation studies indicate that this method can provide improvements in obtaining standard errors of the estimates. We also calculate the dispersion index for this model. The influence of a small perturbation of the dispersion index of the zero-inflated model on likelihood displacement is also studied. The zero-inflated negative binomial regression model is illustrated on data regarding joint damage in psoriatic arthritis.
Date: 2012
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DOI: 10.1080/02664763.2012.699951
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