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ANALYSIS OF OVERDISPERSED COUNT DATA BY MIXTURES OF POISSON VARIABLES AND POISSON PROCESSES

机译:Poisson变量与Poisson过程的混合对过度计数数据的分析

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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. [References: 30]
机译:与泊松分布相比,计数数据通常显示过度分散。通常,基于伽马分布,通过均值的随机效应对超分散进行建模,从而导致计数的负二项式分布。本文考虑了更大的混合分布族,包括逆高斯混合分布。结果表明,它可以更好地拟合癫痫发作频率的数据集。可以使用相同的方法从泊松过程生成计数过程,其中速率或时间是随机的。随机率对应于患者之间的变化,而随机时间对应于患者内部的变化。 [参考:30]

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