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Zero-inflated Bell regression models for count data

机译:计数数据的零充气铃声回归模型

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摘要

By starting from the one-parameter Bell distribution proposed recently in the statistic literature, we introduce the zero-inflated Bell family of distributions. Additionally, on the basis of the proposed zero-inflated distribution, a novel zero-inflated regression model is proposed, which is quite simple and may be an interesting alternative to usual zero-inflated regression models for count data. We consider a frequentist approach to perform inferences, and the maximum likelihood method is employed to estimate the zero-inflated Bell regression parameters. Monte Carlo simulations indicate that the maximum likelihood method is quite effective to estimate the zero-inflated Bell regression parameters. We also propose the Pearson residuals for the new zero-inflated regression model to assess departures from model assumptions. Additionally, the global and local influence methods are discussed. In particular, the normal curvature for studying local influence is derived under case weighting perturbation scheme. Finally, an application to the count of infected blood cells is considered to illustrate the usefulness of the zero-inflated Bell regression model in practice. The results suggest that the new zero-inflated Bell regression is more appropriate to model these count data than other familiar zero-inflated (or not) regression models commonly used in practice.
机译:通过从最近在统计文献中提出的一个参数贝尔分布开始,我们介绍了零充气的钟声分布。另外,在提出的零充气分布的基础上,提出了一种新的零膨胀回归模型,这非常简单,并且可能是对计数数据的常用零膨胀回归模型的有趣替代方案。我们考虑使用频繁的方法来执行推论,并且使用最大似然方法来估计零充气的钟回归参数。 Monte Carlo模拟表明最大似然方法非常有效地估计零充气的铃声回归参数。我们还提出了新的零充气回归模型的Pearson残差,以评估模型假设的偏离。此外,讨论了全局和局部影响方法。特别地,在案例加权扰动方案下得出用于研究局部影响的正常曲率。最后,考虑了对感染血细胞计数的应用,以说明零充气的钟回归模型在实践中的有用性。结果表明,新的零充气铃回归更适合模拟这些计数数据,而不是在实践中常用的其他熟悉的零充气(或不)回归模型。

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