Literature DB >> 21801191

Characterizing the performance of the Conway-Maxwell Poisson generalized linear model.

Royce A Francis1, Srinivas Reddy Geedipally, Seth D Guikema, Soma Sekhar Dhavala, Dominique Lord, Sarah LaRocca.   

Abstract

Count data are pervasive in many areas of risk analysis; deaths, adverse health outcomes, infrastructure system failures, and traffic accidents are all recorded as count events, for example. Risk analysts often wish to estimate the probability distribution for the number of discrete events as part of doing a risk assessment. Traditional count data regression models of the type often used in risk assessment for this problem suffer from limitations due to the assumed variance structure. A more flexible model based on the Conway-Maxwell Poisson (COM-Poisson) distribution was recently proposed, a model that has the potential to overcome the limitations of the traditional model. However, the statistical performance of this new model has not yet been fully characterized. This article assesses the performance of a maximum likelihood estimation method for fitting the COM-Poisson generalized linear model (GLM). The objectives of this article are to (1) characterize the parameter estimation accuracy of the MLE implementation of the COM-Poisson GLM, and (2) estimate the prediction accuracy of the COM-Poisson GLM using simulated data sets. The results of the study indicate that the COM-Poisson GLM is flexible enough to model under-, equi-, and overdispersed data sets with different sample mean values. The results also show that the COM-Poisson GLM yields accurate parameter estimates. The COM-Poisson GLM provides a promising and flexible approach for performing count data regression.
© 2011 Society for Risk Analysis.

Mesh:

Year:  2011        PMID: 21801191     DOI: 10.1111/j.1539-6924.2011.01659.x

Source DB:  PubMed          Journal:  Risk Anal        ISSN: 0272-4332            Impact factor:   4.000


  3 in total

1.  Arabidopsis meiotic crossover hot spots overlap with H2A.Z nucleosomes at gene promoters.

Authors:  Kyuha Choi; Xiaohui Zhao; Krystyna A Kelly; Oliver Venn; James D Higgins; Nataliya E Yelina; Thomas J Hardcastle; Piotr A Ziolkowski; Gregory P Copenhaver; F Chris H Franklin; Gil McVean; Ian R Henderson
Journal:  Nat Genet       Date:  2013-09-22       Impact factor: 38.330

2.  A semi-nonparametric Poisson regression model for analyzing motor vehicle crash data.

Authors:  Xin Ye; Ke Wang; Yajie Zou; Dominique Lord
Journal:  PLoS One       Date:  2018-05-23       Impact factor: 3.240

3.  The COM-Poisson Process for Stochastic Modeling of Osmotic Inactivation Dynamics of Listeria monocytogenes.

Authors:  Pierluigi Polese; Manuela Del Torre; Mara Lucia Stecchini
Journal:  Front Microbiol       Date:  2021-07-09       Impact factor: 5.640

  3 in total

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