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首页> 外文期刊>South African statistical journal >Statistical model for overdispersed count outcome with many zeros: An approach for direct marginal inference
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Statistical model for overdispersed count outcome with many zeros: An approach for direct marginal inference

机译:具有多个零的过度分散计数结果的统计模型:直接边际推断的方法

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Marginalised models are in great demand by many researchers in the life sciences, particularly in clinical trials, epidemiology, health-economics, surveys and many others, since they allow generalisation of inference to the entire population under study. For count data, standard procedures such as the Poisson regression and negative binomial model provide population average inference for model parameters. However, occurrence of excess zero counts and lack of independence in empirical data have necessitated their extension to accommodate these phenomena. These extensions, though useful, complicate interpretations of effects. For example, the zero-inflated Poisson model accounts for the presence of excess zeros, but the parameter estimates do not have a direct marginal inferential ability as the base model, the Poisson model. Marginalisations due to the presence of excess zeros are underdeveloped though demand for them is interestingly high. The aim of this paper, therefore, is to develop a marginalised model for zero-inflated univariate count outcome in the presence of overdispersion. Emphasis is placed on methodological development, efficient estimation of model parameters, implementation and application to two empirical studies. A simulation study is performed to assess the performance of the model. Results from the analysis of two case studies indicate that the refined procedure performs significantly better than models which do not simultaneously correct for overdispersion and presence of excess zero counts in terms of likelihood comparisons and AIC values. The simulation studies also supported these findings. In addition, the proposed technique yielded small biases and mean square errors for model parameters. To ensure that the proposed method enjoys widespread use, it is implemented using the SAS NLMIXED procedure with minimal coding efforts.
机译:生命科学,特别是临床试验,流行病学,健康经济学,调查和许多其他研究中,许多研究人员都迫切需要边际化模型,因为它们可以将推论推广到整个研究人群。对于计数数据,标准程序(例如,泊松回归和负二项式模型)提供了模型参数的总体平均值推断。但是,过多的零计数的发生和经验数据缺乏独立性使得必须对其进行扩展以适应这些现象。这些扩展尽管有用,但使效果的解释复杂化。例如,零膨胀的泊松模型说明了多余的零的存在,但是参数估计没有直接的边际推断能力作为基础模型(泊松模型)。尽管存在多余的零,但对零的需求却很高,因此边缘化尚不完善。因此,本文的目的是针对存在过度分散情况的零膨胀单变量计数结果建立边际化模型。重点放在方法学的发展,模型参数的有效估计,实施和对两个实证研究的应用上。进行仿真研究以评估模型的性能。对两个案例研究进行分析的结果表明,改进的程序的性能明显优于模型,后者无法同时校正似然比较和AIC值的过度分散和存在过多的零计数。仿真研究也支持了这些发现。另外,所提出的技术对于模型参数产生小的偏差和均方误差。为确保所建议的方法得到广泛使用,使用SAS NLMIXED过程以最少的编码工作即可实现该方法。

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