This paper focuses on an extension of zero-inflated generalized Poisson (ZIGP) regression models
for count data. We discuss generalized Poisson (GP) models where dispersion is modelled by an additional model parameter. Moreover, zero-inflated models in which overdispersion is assumed to be caused by an excessive number of zeros are discussed. In addition to ZIGP models considered by several authors, we now allow for regression on the overdispersion and zero-inflation parameters. Consequently, we propose tools for an exploratory data analysis on the dispersion and zero-inflation level. An application dealing with outsourcing of patent filing processes will be used to compare these nonnested models. The model parameters are fitted by maximum likelihood using our R package ”ZIGP” available on CRAN. Asymptotic normality of the ML estimates in this non-exponential setting is proven. Standard errors are estimated
using the asymptotic normality of the estimates. Appropriate exploratory data analysis tools
are developed. Also, a model comparison using AIC statistics and Vuong tests is carried out. For the given data, our extended ZIGP regression model will prove to be superior over GP and ZIP models and even over ZIGP models with constant overall dispersion and zero-inflation
parameters demonstrating the usefulness of our proposed extensions.
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This paper focuses on an extension of zero-inflated generalized Poisson (ZIGP) regression models
for count data. We discuss generalized Poisson (GP) models where dispersion is modelled by an additional model parameter. Moreover, zero-inflated models in which overdispersion is assumed to be caused by an excessive number of zeros are discussed. In addition to ZIGP models considered by several authors, we now allow for regression on the overdispersion and zero-inflation parameters. Consequently, w...
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