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多元分类响应的关联-边际建模:一种最大似然方法

Association-Marginal Modeling of Multivariate Categorical Responses: A Maximum Likelihood Approach

Journal of the American Statistical Association · 1999
被引 10
ABS 4

中文导读

提出关联-边际模型,同时建模多元分类响应的关联结构和边际分布,使用最大似然估计,并通过全国青年调查的大麻使用数据展示方法。

Abstract

Abstract Generalized log-linear models can be used to describe the association structure and/or the marginal distributions of multivariate categorical responses. We simultaneously model the association structure and marginal distributions using association-marginal (AM) models, which are specially formulated generalized log-linear models that combine two models: an association (A) model, which describes the association among all the responses; and a marginal (M) model, which describes the marginal distributions of the responses. Because the model's composite link function is not required to be invertible, a large class of models can be entertained and model specification is typically straightforward. We propose a “mixed freedom/constraint” parameterization that exploits the special structure of an AM model. Using this parameterization, maximum likelihood fitting is straightforward and typically feasible for large, sparse tables. When a parsimonious association model is used, the size of the fitting problem is substantially reduced, and some of the problems associated with sampling O's are avoided. We compare the asymptotic behavior of AM model parameter estimators assuming product-multinomial and Poisson sampling. For computational convenience, the product-multinomial variances are obtained by adjusting the Poisson variances. We propose a conditional score statistic for AM model assessment. The proposed maximum likelihood methods are illustrated through an analysis of marijuana use data from five waves of the National Youth Survey.

计量经济学多元统计分析分类数据分析心理学