分散计数数据的Conway–Maxwell–Poisson回归模型

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2020-09-13 DOI:10.1002/wics.1533
Kimberly F. Sellers, Bailey Premeaux
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引用次数: 21

摘要

虽然泊松回归是对计数响应变量和解释变量之间的关联进行建模的标准工具,但有充分的证据表明,这种方法受到泊松模型对数据等方差假设的限制。Conway–Maxwell–Poisson(COM‐Poisson)分布已被证明是真实计数数据的一种可行的替代方案,这些数据表示数据的离散度过高或过低,因此COM‐Posson回归可以灵活地对涉及离散计数响应变量和协变量的关联进行建模。这项工作概述了COM‐Poisson回归的发展知识和进展,向读者介绍了基础模型(及其考虑的重新参数化)和相关的回归结构,包括零膨胀模型和纵向研究。本文进一步向读者介绍了可用于执行COM‐Poisson和相关回归的相关计算工具。
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Conway–Maxwell–Poisson regression models for dispersed count data
While Poisson regression serves as a standard tool for modeling the association between a count response variable and explanatory variables, it is well‐documented that this approach is limited by the Poisson model's assumption of data equi‐dispersion. The Conway–Maxwell–Poisson (COM‐Poisson) distribution has demonstrated itself as a viable alternative for real count data that express data over‐ or under‐dispersion, and thus the COM‐Poisson regression can flexibly model associations involving a discrete count response variable and covariates. This work overviews the ongoing developmental knowledge and advancement of COM‐Poisson regression, introducing the reader to the underlying model (and its considered reparametrizations) and related regression constructs, including zero‐inflated models, and longitudinal studies. This manuscript further introduces readers to associated computing tools available to perform COM‐Poisson and related regressions.
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
31
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