Zero‐inflated modeling part I: Traditional zero‐inflated count regression models, their applications, and computational tools

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2020-12-14 DOI:10.1002/wics.1541
D. S. Young, Eric Roemmele, Peng Yeh
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引用次数: 10

Abstract

Count regression models maintain a steadfast presence in modern applied statistics as highlighted by their usage in diverse areas like biometry, ecology, and insurance. However, a common practical problem with observed count data is the presence of excess zeros relative to the assumed count distribution. The seminal work of Lambert (1992) was one of the first articles to thoroughly treat the problem of zero‐inflated count data in the presence of covariates. Since then, a vast literature has emerged regarding zero‐inflated count regression models. In this first of two review articles, we survey some of the classic and contemporary literature on parametric zero‐inflated count regression models, with emphasis on the utility of different univariate discrete distributions. We highlight some of the primary computational tools available for estimating and assessing the adequacy of these models. We concurrently emphasize the diverse data problems to which these models have been applied.
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零膨胀建模第一部分:传统的零膨胀计数回归模型,它们的应用,和计算工具
计数回归模型在现代应用统计学中保持着稳固的地位,其在生物计量、生态学和保险等不同领域的应用突出了这一点。然而,观察到的计数数据的一个常见的实际问题是相对于假设的计数分布存在多余的零。Lambert(1992)的开创性工作是最早彻底处理存在协变量的零膨胀计数数据问题的文章之一。从那时起,出现了大量关于零膨胀计数回归模型的文献。在这两篇综述文章中的第一篇中,我们调查了一些关于参数零膨胀计数回归模型的经典和当代文献,重点是不同单变量离散分布的效用。我们强调了一些可用于估计和评估这些模型的充分性的主要计算工具。我们同时强调了这些模型所应用的各种数据问题。
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CiteScore
6.20
自引率
0.00%
发文量
31
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