Publication | Closed Access
Analysis of Overdispersed Count Data by Mixtures of Poisson Variables and Poisson Processes
132
Citations
23
References
1997
Year
Poisson VariablesMixture DistributionEngineeringDensity EstimationData ScienceMixture AnalysisEpileptic SeizuresBiostatisticsStatistical InferenceProbability TheoryOverdispersed Count DataMathematical StatisticRandom EffectPoisson ProcessesStatistics
Count data often show overdispersion compared to the Poisson distribution. Overdispersion is typically modeled by a random effect for the mean, based on the gamma distribution, leading to the negative binomial distribution for the count. This paper considers a larger family of mixture distributions, including the inverse Gaussian mixture distribution. It is demonstrated that it gives a significantly better fit for a data set on the frequency of epileptic seizures. The same approach can be used to generate counting processes from Poisson processes, where the rate or the time is random. A random rate corresponds to variation between patients, whereas a random time corresponds to variation within patients.
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