Cox C
Department of Biostatistics, University of Rochester, School of Medicine and Dentistry, New York 14642, USA.
Stat Med. 1995 Jun 15;14(11):1191-203. doi: 10.1002/sim.4780141105.
Proportional odds regression models for multinomial probabilities based on ordered categories have been generalized in two somewhat different directions. Models having scale as well as location parameters for adjustment of boundaries (on an unobservable, underlying continuum) between categories have been employed in the context of ROC analysis. Partial proportional odds models, having different regression adjustments for different multinomial categories, have also been proposed. This paper considers a synthesis and further generalization of these two families. With use of a number of examples, I discuss and illustrate properties of this extended family of models. Emphasis is on the computation of maximum likelihood estimates of parameters, asymptotic standard deviations, and goodness-of-fit statistics with use of non-linear regression programs in standard statistical software such as SAS.
基于有序分类的多项概率比例优势回归模型已在两个略有不同的方向上得到推广。在ROC分析的背景下,已采用具有尺度以及位置参数的模型来调整类别之间的边界(在一个不可观测的潜在连续统上)。还提出了部分比例优势模型,该模型对不同的多项类别进行不同的回归调整。本文考虑了这两个模型族的综合与进一步推广。通过多个示例,我讨论并说明了这个扩展模型族的性质。重点在于使用标准统计软件(如SAS)中的非线性回归程序来计算参数的最大似然估计、渐近标准差和拟合优度统计量。