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An empirical approach to determine a threshold for assessing overdispersion in Poisson and negative binomial models for count data

机译:一种确定阈值的经验方法,该阈值用于评估泊松和计数数据的负二项式模型中的过度分散

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摘要

Overdispersion is a problem encountered in the analysis of count data that can lead to invalid inference if unaddressed. Decision about whether data are overdispersed is often reached by checking whether the ratio of the Pearson chi-square statistic to its degrees of freedom is greater than one; however, there is currently no fixed threshold for declaring the need for statistical intervention. We consider simulated cross-sectional and longitudinal datasets containing varying magnitudes of overdispersion caused by outliers or zero inflation, as well as real datasets, to determine an appropriate threshold value of this statistic which indicates when overdispersion should be addressed.
机译:过度分散是计数数据分析中遇到的问题,如果不解决,可能导致无效的推断。通常通过检查Pearson卡方统计量与其自由度的比率是否大于1来确定数据是否过于分散。但是,目前尚无确定需要进行统计干预的固定门槛。我们考虑包含由异常值或零膨胀引起的变化幅度过大的模拟横截面和纵向数据集,以及实际数据集,以确定该统计数据的适当阈值,该阈值指示何时应解决过度分散。

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