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Marginalized zero-inflated generalized Poisson regression

机译:边际零膨胀广义泊松回归

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摘要

The generalized Poisson (GP) regression model has been used to model count data that exhibit over-dispersion or under-dispersion. The zero-inflated GP (ZIGP) regression model can additionally handle count data characterized by many zeros. However, the parameters of ZIGP model cannot easily be used for inference on overall exposure effects. In order to address this problem, a marginalized ZIGP is proposed to directly model the population marginal mean count. The parameters of the marginalized zero-inflated GP model are estimated by the method of maximum likelihood. The regression model is illustrated by three real-life data sets.
机译:广义泊松(GP)回归模型已用于对表现出过度分散或分散不足的计数数据进行建模。零膨胀GP(ZIGP)回归模型可以另外处理以许多零为特征的计数数据。但是,ZIGP模型的参数不能轻易用于推断总体曝光效果。为了解决这个问题,提出了一种边缘化的ZIGP来直接对人口边缘平均数进行建模。边缘化零膨胀GP模型的参数通过最大似然法估计。回归模型由三个真实数据集说明。

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