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Locally efficient semiparametric estimator for zero-inflated Poisson model with error-prone covariates

机译:用于易于变焦的零充气泊松模型的局部高效的半探测器

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摘要

Overdispersion is a common phenomenon in count or frequency responses in Poisson models. For example, number of car accidents on a highway during a year period. A similar phenomenon is observed in electric power systems, where cascading failures often follows some distribution with inflated zero. When the response contains an excess amount of zeros, zero-inflated Poisson (ZIP) is the most favourable model. However, during the data collection process, some of the covariates cannot be accessed directly or are measured with error among numerous disciplines. To the best of our knowledge, little existing work is available in the literature that tackles the population heterogeneity in the count response while some of the covariates are measured with error. With the increasing popularity of such outcomes in modern studies, it is interesting and timely to study zero-inflated Poisson models in which some of the covariates are subject to measurement error while some are not. We propose a flexible partial linear single index model for the log Poisson mean to correct bias potentially due to the error in covariates or the population heterogeneity. We derive consistent and locally efficient semiparametric estimators and study the large sample properties. We further assess the finite sample performance through simulation studies. Finally, we apply the proposed method to a real data application and compare with existing methods that handle measurement error in covariates.
机译:过度分散是泊松模型中计数或频率响应的常见现象。例如,一年期间高速公路上的汽车事故数量。在电力系统中观察到类似的现象,其中级联故障通常遵循零升零的一些分布。当响应包含过量的零量时,零充气泊松(ZIP)是最有利的模型。但是,在数据收集过程中,无法直接访问某些协变量,或者在众多学科之间使用错误进行测量。据我们所知,文献中的一些现有工作可以在计数响应中解决群体异质性,而一些协变量用误差测量。随着现代研究中这种结果的普及,研究零充气的泊松模型是有趣的,有趣的,其中一些协变量受到测量误差,而有些人则不是。我们提出了一种灵活的部分线性单个索引模型,用于LOG Poisson意味着由于协变量或群体异质性的错误,可能纠正偏差。我们得出一致和局部有效的半抗体估计器,并研究大的样品特性。我们通过模拟研究进一步评估了有限的样本性能。最后,我们将所提出的方法应用于真实数据应用程序,并与处理协变量中的测量错误的现有方法进行比较。

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