欠分散计数数据的经验模型

M. Ridout, P. Besbeas
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引用次数: 101

摘要

我们提出了一种新的分布,用于模拟相对于泊松分布的欠分散计数数据。该分布是加权泊松分布的一种形式,与其他提出的用于模拟欠分散的加权泊松分布相比,该分布具有优势。一个关键的区别是,我们的分布中的权重集中在潜在泊松分布的平均值上。给出了几个示例,说明了该分布始终具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An empirical model for underdispersed count data
We present a novel distribution for modelling count data that are underdispersed relative to the Poisson distribution. The distribution is a form of weighted Poisson distribution and is shown to have advantages over other weighted Poisson distributions that have been proposed to model underdispersion. One key difference is that the weights in our distribution are centred on the mean of the underlying Poisson distribution. Several illustrative examples are presented that illustrate the consistently good performance of the distribution.
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