关于任意欠分散离散分布

A. Huang
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引用次数: 2

摘要

我们调查了一系列流行的广义计数分布,研究了哪些(如果有的话)可以任意欠分散,即其方差相对于均值可以任意小。一个哲学上的含义是,根据McCullagh的可扩展性标准,一些不符合这个简单标准的模型不应该被视为“统计模型”。还讨论了四个实际意义:(i)参数的函数独立性,(ii)双广义线性模型,(iii)欠分散计数的模拟,以及(iv)严重欠分散计数回归。我们建议今后所有泊松分布的推广都要根据这一关键性质进行检验。
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On Arbitrarily Underdispersed Discrete Distributions
Abstract We survey a range of popular generalized count distributions, investigating which (if any) can be arbitrarily underdispersed, that is, its variance can be arbitrarily small compared to its mean. A philosophical implication is that some models failing this simple criterion should not be considered as “statistical models” according to McCullagh’s extendibility criterion. Four practical implications are also discussed: (i) functional independence of parameters, (ii) double generalized linear models, (iii) simulation of underdispersed counts, and (iv) severely underdispersed count regression. We suggest that all future generalizations of the Poisson distribution be tested against this key property.
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