Prentice R L
Division of Public Health Sciences, Fred Hutchinson Cancer Research Center, Seattle, Washington 98104.
Biometrics. 1988 Dec;44(4):1033-48.
Regression methods are considered for the analysis of correlated binary data when each binary observation may have its own covariates. It is argued that binary response models that condition on some or all binary responses in a given "block" are useful for studying certain types of dependencies, but not for the estimation of marginal response probabilities or pairwise correlations. Fully parametric approaches to these latter problems appear to be unduly complicated except in such special cases as the analysis of paired binary data. Hence, a generalized estimating equation approach is advocated for inference on response probabilities and correlations. Illustrations involving both small and large block sizes are provided.
当每个二元观测值可能有其自身的协变量时,回归方法被用于分析相关二元数据。有人认为,基于给定“块”中的一些或所有二元响应进行条件设定的二元响应模型,对于研究某些类型的依赖性是有用的,但不适用于边际响应概率或成对相关性的估计。除了在诸如配对二元数据分析等特殊情况下,针对后一类问题的完全参数化方法似乎过于复杂。因此,提倡使用广义估计方程方法来推断响应概率和相关性。文中给出了涉及小块和大块大小的示例。