有序回归:模型的回顾和分类

IF 4.4 2区 数学 Q1 STATISTICS & PROBABILITY Wiley Interdisciplinary Reviews-Computational Statistics Pub Date : 2021-01-11 DOI:10.1002/wics.1545
G. Tutz
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引用次数: 24

摘要

有序模型可以看作是由更简单的模型,特别是二元模型组成的。这种关于有序模型的观点允许导出模型的分类,其中包括基本的有序回归模型、具有更复杂参数化的模型、层次结构模型类以及最近开发的有限混合模型。给出的结构化概述涵盖了现有模型,并展示了如何扩展模型以解释解释变量的进一步影响。特别注意额外的非均质性的建模,例如,色散效应。将模型嵌入到响应样式的框架中,并研究了有序模型中异质性项的确切含义。结果表明,术语的含义关键取决于所使用的模型类型。此外,还演示了如何简化具有复杂类别特定效应结构的模型,以获得足够好拟合的更简单的模型。用一个实际数据集来说明模型的拟合,并对现有软件进行了简要概述。
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Ordinal regression: A review and a taxonomy of models
Ordinal models can be seen as being composed from simpler, in particular binary models. This view on ordinal models allows to derive a taxonomy of models that includes basic ordinal regression models, models with more complex parameterizations, the class of hierarchically structured models, and the more recently developed finite mixture models. The structured overview that is given covers existing models and shows how models can be extended to account for further effects of explanatory variables. Particular attention is given to the modeling of additional heterogeneity as, for example, dispersion effects. The modeling is embedded into the framework of response styles and the exact meaning of heterogeneity terms in ordinal models is investigated. It is shown that the meaning of terms is crucially determined by the type of model that is used. Moreover, it is demonstrated how models with a complex category‐specific effect structure can be simplified to obtain simpler models that fit sufficiently well. The fitting of models is illustrated by use of a real data set, and a short overview of existing software is given.
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来源期刊
CiteScore
6.20
自引率
0.00%
发文量
31
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