Please use this identifier to cite or link to this item: http://repositorio.ufla.br/jspui/handle/1/38208
Title: The Gamma-count distribution in the analysis of experimental underdispersed data
Keywords: Poisson regression
Likelihood inference
Gamma-count
Regressão de Poisson
Inferência de probabilidade
Contagem gama
Issue Date: 2014
Publisher: Taylor & Francis
Citation: ZEVIANI, W. M.; RIBEIRO JUNIOR, P. J.; BONAT, W. H.; SHIMAKURA, S. E.; MUNIZ, J. A. The Gamma-count distribution in the analysis of experimental underdispersed data. Journal of Applied Statistics, Abingdon, v. 41, n. 12, p. 2616-2626, 2014.
Abstract: Event counts are response variables with non-negative integer values representing the number of times that an event occurs within a fixed domain such as a time interval, a geographical area or a cell of a contingency table. Analysis of counts by Gaussian regression models ignores the discreteness, asymmetry and heteroscedasticity and is inefficient, providing unrealistic standard errors or possibly negative predictions of the expected number of events. The Poisson regression is the standard model for count data with underlying assumptions on the generating process which may be implausible in many applications. Statisticians have long recognized the limitation of imposing equidispersion under the Poisson regression model. A typical situation is when the conditional variance exceeds the conditional mean, in which case models allowing for overdispersion are routinely used. Less reported is the case of underdispersion with fewer modeling alternatives and assessments available in the literature. One of such alternatives, the Gamma-count model, is adopted here in the analysis of an agronomic experiment designed to investigate the effect of levels of defoliation on different phenological states upon the number of cotton bolls. Data set and code for analysis are available as online supplements. Results show improvements over the Poisson model and the semi-parametric quasi-Poisson model in capturing the observed variability in the data. Estimating rather than assuming the underlying variance process leads to important insights into the process.
URI: https://www.tandfonline.com/doi/full/10.1080/02664763.2014.922168
http://repositorio.ufla.br/jspui/handle/1/38208
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