Marginal models involve restrictions on the conditional and marginal association structure of a set of categorical variables. They generalize log-linear models for contingency tables, which are the fundamental tools for modelling the conditional association structure. This chapter gives an overview of the development of marginal models during the past 20 years. After providing some motivating examples, the first few sections focus on the definition and characteristics of marginal models. Specifically, we show how their fundamental properties can be understood from the properties of marginal log-linear parameterizations. Algorithms for estimating marginal models are discussed, focussing on the maximum likelihood and the generalized estimating equations approaches. It is shown how marginal models can help to understand directed graphical and path models, and a description is given of marginal models with latent variables.
翻译:边际模型涉及对一组分类变量的条件和边际关联结构施加限制。它们推广了针对列联表建模的对数线性模型,这些模型是建模条件关联结构的基本工具。本章提供了边际模型在过去20年内的发展概述。在提供一些激励示例之后,前几部分着重于定义和特点。具体而言,我们展示了如何从边际对数线性参数化的属性中理解它们的基本属性。讨论了估计边际模型的算法,重点关注最大似然和广义估计方程方法。展示了边际模型如何帮助理解定向图形和路径模型,并描述了具有潜变量的边际模型。