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A framework for modelling overdispersed count data, including the Poisson-shifted generalized inverse Gaussian distribution

机译:用于建模过度分散的计数数据的框架,包括泊松移位的广义逆高斯分布

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摘要

A variety of methods of modelling overdispersed count data are compared. The methods are classified into three main categories. The first category are ad hoc methods (i.e. pseudo-likelihood, (extended) quasi-likelihood, double exponential family distributions). The second category are discretized continuous distributions and the third category are observational level random effects models (i.e. mixture models comprising explicit and non-explicit continuous mixture models and finite mixture models). The main focus of the paper is a family of mixed Poisson distributions defined so that its mean μ is an explicit parameter of the distribution. This allows easier interpretation when μ is modelled using explanatory variables and provides a more orthogonal parameterization to ease model fitting. Specific three parameter distributions considered are the Sichel and Delaporte distributions. A new four parameter distribution, the Poisson-shifted generalized inverse Gaussian distribution is introduced, which includes the Sichel and Delaporte distributions as a special and a limiting case respectively. A general formula for the derivative of the likelihood with respect to μ, applicable to the whole family of mixed Poisson distributions considered, is given. Within the framework introduced here all parameters of the distributions are modelled as parametric and/or nonparametric (smooth) functions of explanatory variables. This provides a very flexible way of modelling count data. Maximum (penalized) likelihood estimation is used to fit the (non)parametric models.
机译:比较了各种建模超分散计数数据的方法。这些方法分为三大类。第一类是临时方法(即伪似然,(扩展的)拟似然,双指数族分布)。第二类是离散的连续分布,第三类是观察水平的随机效应模型(即包括显式和非显式连续混合物模型和有限混合物模型的混合物模型)。本文的主要焦点是定义的混合泊松分布族,因此其均值μ是分布的显式参数。当使用解释变量对μ进行建模时,这可以简化解释,并提供更正交的参数设置以简化模型拟合。考虑的特定的三个参数分布是Sichel和Delaporte分布。引入了一种新的四参数分布,即泊松位移广义逆高斯分布,其中分别包含了Sichel和Delaporte分布作为特殊情况和极限情况。给出了适用于所考虑的整个混合泊松分布族的关于μ的似然导数的一般公式。在此处介绍的框架内,分布的所有参数均建模为解释变量的参数和/或非参数(平滑)函数。这提供了一种非常灵活的对计数数据进行建模的方式。最大(惩罚)似然估计用于拟合(非)参数模型。

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