Partitioning variation in multilevel models for count data.

过度分散 范畴变量 组内相关 统计 计数数据 多级模型 数学 聚类分析 负二项分布 泊松分布 项目反应理论 差异(会计) 二进制数据 计量经济学 相关性 二进制数 心理测量学 会计 业务 几何学 算术
作者
George Leckie,William J. Browne,Harvey Goldstein,Juan Merlo,Peter C. Austin
出处
期刊:Psychological Methods [American Psychological Association]
卷期号:25 (6): 787-801 被引量:58
标识
DOI:10.1037/met0000265
摘要

A first step when fitting multilevel models to continuous responses is to explore the degree of clustering in the data. Researchers fit variance-component models and then report the proportion of variation in the response that is due to systematic differences between clusters. Equally they report the response correlation between units within a cluster. These statistics are popularly referred to as variance partition coefficients (VPCs) and intraclass correlation coefficients (ICCs). When fitting multilevel models to categorical (binary, ordinal, or nominal) and count responses, these statistics prove more challenging to calculate. For categorical response models, researchers appeal to their latent response formulations and report VPCs/ICCs in terms of latent continuous responses envisaged to underly the observed categorical responses. For standard count response models, however, there are no corresponding latent response formulations. More generally, there is a paucity of guidance on how to partition the variation. As a result, applied researchers are likely to avoid or inadequately report and discuss the substantive importance of clustering and cluster effects in their studies. A recent article drew attention to a little-known exact algebraic expression for the VPC/ICC for the special case of the two-level random-intercept Poisson model. In this article, we make a substantial new contribution. First, we derive exact VPC/ICC expressions for more flexible negative binomial models that allows for overdispersion, a phenomenon which often occurs in practice. Then we derive exact VPC/ICC expressions for three-level and random-coefficient extensions to these models. We illustrate our work with an application to student absenteeism. (PsycInfo Database Record (c) 2020 APA, all rights reserved).

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