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Estimating infant mortality in Colombia: some overdispersion modelling approaches

Acceso Cerrado
ID Minciencias: ART-0000177334-88
Ranking: ART-ART_C

Abstract:

It is common to fit generalized linear models with binomial and Poisson responses, where the data show a variability that is greater than the theoretical variability assumed by the model. This phenomenon, known as overdispersion, may spoil inferences about the model by considering significant parameters associated with variables that have no significant effect on the dependent variable. This paper explains some methods to detect overdispersion and presents and evaluates three well-known methodologies that have shown their usefulness in correcting this problem, using random mean models, quasi-likelihood methods and a double exponential family. In addition, it proposes some new Bayesian model extensions that have proved their usefulness in correcting the overdispersion problem. Finally, using the information provided by the National Demographic and Health Survey 2005, the departmental factors that have an influence on the mortality of children under 5 years and female postnatal period screening are determined. Based on the results, extensions that generalize some of the aforementioned models are also proposed, and their use is motivated by the data set under study. The results conclude that the proposed overdispersion models provide a better statistical fit of the data.

Tópico:

Statistical Distribution Estimation and Applications

Citaciones:

Citations: 12
12

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Información de la Fuente:

SCImago Journal & Country Rank
FuenteJournal of Applied Statistics
Cuartil año de publicaciónNo disponible
Volumen39
Issue5
Páginas1011 - 1036
pISSNNo disponible
ISSN1360-0532

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