Search results for "Zero-inflated model"

showing 4 items of 4 documents

Comparison of the Andersen–Gill model with poisson and negative binomial regression on recurrent event data

2008

Many generalizations of the Cox proportional hazard method have been elaborated to analyse recurrent event data. The Andersen-Gill model was proposed to handle event data following Poisson processes. This method is compared with non-survival approaches, such as Poisson and negative binomial regression. The comparison is performed on data simulated according to various event-generating processes and differing in subject heterogeneity. When robust standard error estimates are applied, for Poisson processes the Andersen-Gill approach is comparable to a negative binomial regression, whereas the poisson regression has comparable coverage probabilities of confidence intervals, but increased type …

Statistics and ProbabilityApplied MathematicsPoisson binomial distributionCoverage probabilityNegative binomial distributionRegression analysisPoisson distributionComputational Mathematicssymbols.namesakeComputational Theory and MathematicsStatisticsEconometricssymbolsZero-inflated modelPoisson regressionMathematicsCount dataComputational Statistics & Data Analysis
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Modeling accident risk at the road level through zero-inflated negative binomial models: A case study of multiple road networks

2021

Abstract This paper presents a case study carried out in multiple cities of the Valencian Community (Spain) to determine the effect of sociodemographic and road characteristics on traffic accident risk. The analyzes are performed at the road segment level, considering the linear network representing the road structure of each city as a spatial lattice. The number of accidents observed in each road segment from 2010 to 2019 is taken as the response variable, and a zero-inflated modeling approach is considered. Count overdispersion and spatial dependence are also accounted for. Despite the complexity and sparsity of the data, the fitted models performed considerably well, with few exceptions.…

Statistics and ProbabilityComputer sciencespatial dependence0208 environmental biotechnologyAccident riskMagnitude (mathematics)Distribution (economics)02 engineering and technologyManagement Monitoring Policy and Law01 natural sciencestraffic accidents010104 statistics & probabilityOverdispersionCovariateStatisticsZero-inflated model0101 mathematicsComputers in Earth SciencesSpatial dependencelattice structurebusiness.industryIntegrated Nested Laplace Approximationzero-inflated model020801 environmental engineeringVariable (computer science)linear networksbusiness
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Bayesian Analysis of zero-inflated regression model with application to dental caries

2011

bayesian statisticszero-inflated modelSettore MED/01 - Statistica Medica
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Statistical Methods for the Geographical Analysis of Rare Diseases

2010

In this chapter we provide a summary of different methods for the detection of disease clusters. First of all, we give a summary of methods for computing estimates of the relative risk. These estimates provide smoothed values of the relative risks that can account for its spatial variation. Some methods for assessing spatial autocorrelation and general clustering are also discussed to test for significant spatial variation of the risk. In order to find the actual location of the clusters, scan methods are introduced. The spatial scan statistic is discussed as well as its extension by means of Generalised Linear Models that allows for the inclusion of covariates and cluster effects. In this …

Computer scienceScan statisticStatisticsCovariateLinear modelZero-inflated modelSpatial variabilityContext (language use)Cluster analysisSpatial analysis
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