Agresti A
Department of Statistics, University of Florida, Gainesville 32611.
Stat Med. 1989 Oct;8(10):1209-24. doi: 10.1002/sim.4780081005.
We survey models for analysing repeated observations on an ordered categorical response variable. The models presented are univariate models that permit correlation among repeated measurements. The models describe simultaneously the dependence of marginal response distributions on values of explanatory variables and on the occasion of response. We present models for three transformations of the response distribution: cumulative logits, adjacent-category logits, and the mean for scores assigned to response categories. We discuss three methods for fitting the models: maximum likelihood, weighted least squares, and semi-parametric. Weighted least squares is easily implemented with SAS, as illustrated with a study designed to compare a drug with a placebo for the treatment of insomnia.
我们考察了用于分析有序分类响应变量重复观测值的模型。所呈现的模型是单变量模型,允许重复测量之间存在相关性。这些模型同时描述了边际响应分布对解释变量值以及响应时机的依赖性。我们给出了响应分布三种变换形式的模型:累积对数比率、相邻类别对数比率以及分配给响应类别的分数均值。我们讨论了三种拟合模型的方法:最大似然法、加权最小二乘法和半参数法。加权最小二乘法很容易用SAS实现,文中通过一项旨在比较一种药物与安慰剂治疗失眠效果的研究进行了说明。