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Analysis of zero-inflated clustered count data: A marginalized model approach

机译:零膨胀聚类计数数据分析:边际化模型方法

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摘要

Min and Agresti (2005) proposed random effect hurdle models for zero-inflated clustered count data with two-part random effects for a binary component and a truncated count component. In this paper, we propose new marginalized models for zero-inflated clustered count data using random effects. The marginalized models are similar to Dobbie and Welsh's (2001) model in which generalized estimating equations were exploited to find estimates. However, our proposed models are based on a likelihood-based approach. A Quasi-Newton algorithm is developed for estimation. We use these methods to carefully analyze two real datasets.
机译:Min and Agresti(2005)提出了零膨胀聚类计数数据的随机效应障碍模型,其中二进制分量和截断计数分量具有两部分随机效应。在本文中,我们提出了使用随机效应的零膨胀聚类计数数据的新边际化模型。边缘化模型与Dobbie和Welsh(2001)的模型相似,在模型中,利用广义估计方程来找到估计值。但是,我们提出的模型是基于基于可能性的方法。开发了拟牛顿算法进行估计。我们使用这些方法来仔细分析两个真实的数据集。

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